Skip to main content
Erschienen in: European Radiology 4/2019

Open Access 02.10.2018 | Gastrointestinal

Gastric cancer and imaging biomarkers: Part 1 – a critical review of DW-MRI and CE-MDCT findings

verfasst von: Francesco Giganti, Lei Tang, Hideo Baba

Erschienen in: European Radiology | Ausgabe 4/2019

Abstract

The current standard of care for gastric cancer imaging includes heterogeneity in image acquisition techniques and qualitative image interpretation. In addition to qualitative assessment, several imaging techniques, including diffusion-weighted magnetic resonance imaging (DW-MRI), contrast-enhanced multidetector computed tomography (CE-MDCT), dynamic-contrast enhanced MRI and 18F-fluorodeoxyglucose positron emission tomography, can allow quantitative analysis. However, so far there is no consensus regarding the application of functional imaging in the management of gastric cancer. The aim of this article is to specifically review two promising biomarkers for gastric cancer with reasonable spatial resolution: the apparent diffusion coefficient (ADC) from DW-MRI and textural features from CE-MDCT. We searched MEDLINE/ PubMed for manuscripts published from inception to 6 February 2018. Initially, we searched for (gastric cancer OR gastric tumour) AND diffusion weighted magnetic resonance imaging. Then, we searched for (gastric cancer OR gastric tumour) AND texture analysis AND computed tomography. We collated the results from the studies related to this query. There is evidence that: (1) the ADC is a promising biomarker for the evaluation of the aggressiveness (T and N stage), treatment response and prognosis of gastric cancer; (2) textural features are related to the degree of differentiation, Lauren classification, treatment response and prognosis of gastric cancer. We conclude that these imaging biomarkers hold promise as effective additional tools in the diagnostic pathway of gastric cancer and may facilitate the multidisciplinary work between the radiologist and clinician, and across different institutions, to provide a greater biological understanding of gastric cancer.

Key Points

• Quantitative imaging is the extraction of quantifiable features from medical images for the assessment of normal or pathological conditions and represents a promising area for gastric cancer.
• Quantitative analysis from CE-MDCT and DW-MRI allows the extrapolation of multiple imaging biomarkers.
• ADC from DW-MRI and CE- MDCT-based texture features are non-invasive, quantitative imaging biomarkers that hold promise in the evaluation of the aggressiveness, treatment response and prognosis of gastric cancer.
Abkürzungen
18F-FDG-PET
18F-fluorodeoxyglucose positron emission tomography
ADC
Apparent diffusion coefficient
CE-MDCT
Contrast-enhanced multidetector computed tomography
DW-MRI
Diffusion-weighted magnetic resonance imaging
ROI
Region of interest
SUV
Standardised uptake volume
TNM
Tumour, Node, Metastasis
TRG
Tumour regression grade

Introduction

Gastric cancer is one of the most common malignancies worldwide [1].
The recommended management of this disease is a standardised multidisciplinary approach, which involves surgery, neoadjuvant and adjuvant chemotherapy. Surgical pathology is the reference standard for staging gastric cancer, and the Tumour, Node, Metastasis (TNM) classification is the most important tool for an adequate therapeutic plan and for predicting treatment response and prognosis [2]. Imaging plays a crucial role in the detection, staging, treatment planning and follow-up of this disease [3, 4].
A biomarker indicates a biological process (normal or pathological) both at baseline and after therapeutic interventions [5]. Oncological imaging represents an ideal setting for the collection of new biomarkers from different techniques, as oncological patients usually undergo multiple imaging studies [6]. The European Society of Radiology published a white paper on imaging biomarkers that underlined their importance as non-invasive, quantitative tools with different applications in oncology [7]. The Radiological Society of North America has also promoted the use of imaging biomarkers in clinical trials [8].
Quantitative imaging is the extraction of quantifiable features from medical images to assess normal or pathological conditions [9, 10].
There is a wide range of imaging biomarkers from different techniques. It is possible to extrapolate multiple imaging biomarkers through quantitative analysis of data derived from different techniques, such as contrast-enhanced multidetector computed tomography (CE-MDCT), diffusion-weighted magnetic resonance imaging (DW-MRI), dynamic contrast-enhanced (DCE)-MRI and 18F-fluorodeoxyglucose positron emission tomography (18F-FDG-PET) [1119].
While reviews and meta-analyses of other imaging modalities (e.g. 18 FDG-PET) have been already carried out [2025], this is the first time that a critical review has been specifically designed to summarise the state of the art of imaging biomarkers such as ADC from DW-MRI and texture features from CE-MDCT in gastric cancer.
Currently, there are only a few defined diagnostic and prognostic biomarkers for gastric tumours but none are related to imaging techniques [2628].
In an attempt to overcome such limitations, in this review we specifically provide the state of the art on the use of two imaging biomarkers: the apparent diffusion coefficient (ADC) from DW-MRI and texture features from CE-MDCT.

Evidence acquisition

We searched MEDLINE/ PubMed for manuscripts published from inception to 6 February 2018. Initially we searched for (gastric cancer OR gastric tumor) AND diffusion weighted magnetic resonance imaging. Then, our search included (gastric cancer OR gastric tumour) AND texture analysis AND computed tomography. Figure 1 shows the literature search and study selection.

DW-MRI and imaging biomarkers

Eleven studies on DW-MRI were relevant to our query, and they were assessed in full.

Basic concepts of DW-MRI

DW-MRI measures the mobility of water molecules within tissues. Water diffusion is restricted in highly cellular tissues such as tumours, but some conditions (fibrosis/inflammation) can also show restricted diffusion [29].
Tissues with higher cellularity result in higher signal intensity on DWI. The b value is a parameter that identifies the measurement's sensitivity to water diffusion. The optimal b value should attenuate the healthy background tissue more than the lesion, with a reasonable signal-to-noise ratio at the same time. The greater the b value is, the stronger the DWI signal and the detection of pathological areas [29]. It is possible to generate a dedicated map that enables the calculation of the ADC. An area of higher signal intensity on DWI appears as a low-signal intensity on the ADC map. The region of interest (ROI) from which the ADC is calculated can be drawn as a small area or as a larger area encompassing the whole tumour on a single slice (Fig. 2). The ADC can also be obtained drawing the ROIs on all the slices where the tumour is visible (planimetry). This parameter is therefore a quantitative measurement of the mobility of water molecules within tissues and tumours, given their higher cellularity, have lower ADC values than normal areas [30].

DW-MRI to assess the aggressiveness of gastric cancer

MRI of abdominal organs is often influenced by macroscopic motion. Imaging acquisition should be performed with breath-hold or respiratory triggering sequences, after the administration of intravenous/intramuscular anti-peristaltic agents and oral water to distend the gastric lumen [30, 31].
Growing evidence supports the use of DW-MRI in the assessment of the aggressiveness of gastric cancer [3243]. Table 1 summarises the recent studies that have addressed this topic by analysing the role of ADC.
Table 1
DW-MRI and aggressiveness of gastric cancer
Study (ref.)
Year
Country
Type of study
No. of patients
MRI system
b values (s/mm2)
ROI placement for ADC calculation
ADC values
(× 10-3 mm2/s)
Reference standard
Key message
Cheng et al [38]
2013
China
Prospective
28
1.5 T
0, 400, 800
Lymph nodes
1.55 vs. 1.28 a
Radical surgery
ADC can predict metastatic lymph nodes
Liu et al [35]
2015
China
Retrospective
70
3.0 T
0, 1000
Primary tumour
1.01 vs. 0.89 b
1.25 vs. 0.97 a
Radical surgery
ADC correlates with postoperative TNM stage and can be useful in assessing nodal involvement
Hasbahceci et al [42]
2015
Turkey
Prospective
23
1.5 T
50, 400, 800
Lymph nodes
1.02 vs. 0.90 a
Radical surgery
No significant difference in ADC for nodal involvement
Zhong et al [41]
2016
China
Retrospective
82
3.0 T
0, 1000
Lymph nodes
1.48 vs. 1.15 a
Radical surgery
The addition of DWI to CT and conventional MR scans yields higher accuracy for detecting metastatic lymph nodes
Giganti et al [37]
2017
Italy
Retrospective
89
1.5 T
0, 600
Primary tumour
1.57 vs. 1.22 c
1.81 vs. 1.30 a
Radical surgery
ADC is significantly different according to local invasion and nodal involvement
MRI magnetic resonance imaging, ROI region of interest, ADC apparent diffusion coefficient, TNM Tumour, Node, Metastasis
aN0 vs. N+
bT3 vs. T4
cT1-3 vs. T4
Cheng et al [38] calculated ADC of pathological lymph nodes (dimensional criteria ≥ 5 mm in short-axis diameter) on a pixel-by-pixel base. After extended lymphadenectomy, metastatic lymph nodes showed lower median ADC than benign lymph nodes (1.28 vs. 1.55 × 10-3 mm2/s, p < 0.001). A cut-off of 1.39 × 10-3 mm2/s could discriminate between pathological and benign lymph nodes with a sensitivity of 85.7% and specificity of 79.4%. Quantitative results were also compared with morphological factors including size, border irregularity and enhancement patterns. The authors concluded that ADC holds promise to identify metastatic lymph nodes in gastric cancer. Their results are relevant, but lymph nodes < 5 mm were not evaluated because of the limited resolution of DWI.
Liu et al [35] conducted a retrospective study where the mean and minimum ADCs of gastric cancer were calculated and compared with surgical specimens. Both parameters showed a significant difference in detecting the different degrees of local invasion and nodal involvement. In particular, the correlation (r) with postoperative T staging was -0.464 (mean ADC) and -0.476 (minimum ADC) (p < 0.001), while the correlation (r) with postoperative N staging was -0.402 (mean ADC) and -0.397 (minimum ADC) (p = 0.001 and 0.002, respectively).
The same group conducted a whole-lesion ADC histogram analysis in 80 patients comparing the results with radical specimens [43]. Significant differences for all ADC parameters with respect to T and N stages were found. In particular, the ADC10% provided the largest area under the curve (0.794) to identify nodal involvement.
Liu et al [34] investigated the role of whole-volume ADC-based entropy (a parameter describing tumour heterogeneity) in the preoperative assessment of gastric cancer. Entropy-related parameters from the ADC map significantly correlated with postoperative T, N and overall stage as well as vascular and perineural invasion.
Conversely, Hasbahceci et al [42] showed that it is not feasible to evaluate nodal involvement in gastric cancer by means of ADC. The cohort comprised 23 patients and ADC did not differentiate between benign and metastatic lymph nodes. However, the accuracy of DW-MRI in identifying metastatic lymph nodes in this study was 52.17%, 65.21% and 69.56% for group Ia, Ib and II, respectively. The overall accuracy of N-staging based on DW-MRI was 13%. The lack of motion correction manoeuvres and the small number of patients represent important limitations of this study.
Zhong and colleagues [41] showed that pathological lymph nodes have a lower ADC than benign lymph nodes (1.15 vs. 1.48 × 10-3 mm2/s, respectively; p <0.001). The same group compared the results from DWI with morphological MRI (T2-weighted imaging) and CE-MDCT; the combination of the three techniques yielded the highest area under the curve (0.893) for nodal involvement. The results are interesting, but a rigorous radiological-pathological correlation could not be assessed because of the large number and complex anatomic location of lymph nodes in gastric cancer. Another study [37] conducted on 89 patients reported that ADC is different according to local invasion, nodal involvement and the 7th TNM edition stage groups (p < 0.001). Therefore, there is evidence that ADC is a promising, non-invasive imaging biomarker for the evaluation of the aggressiveness of gastric cancer.

DW-MRI in treatment response of gastric cancer

In recent years, there has been considerable interest in the application of DW-MRI to assess treatment response in gastric cancer [4448]. Table 2 reports the main studies that have addressed this topic by means of ADC. Two studies from the same centre [46, 47] showed that ADC could be considered a reliable indicator of treatment response. De Cobelli et al [46] analysed ADC before and after treatment and compared the results with tumour volume, considering tumour regression grade (TRG) as the reference standard [49]. Responders showed a significant increase in ADC compared with non-responders (85.45% increase vs. 8.21% decrease, respectively: p < 0.001). However, this study also included patients with oesophageal cancer. Similar results [47] were found comparing ADC and standardised uptake volume (SUV) values in 17 patients undergoing DW-MRI and PET, before and after therapy. Changes in ADC were correlated with TRG (r = -0.78; p < 0.001), while SUV did not yield significant results. The results from this study are promising even though the number of patients is small (n = 17).
Table 2
DW-MRI and treatment response in gastric cancer
Study (ref.)
Year
Country
Type of study
No. of patients
MRI system
b values (s/mm2)
ROI placement for ADC calculation
Pre-treatment ADC in responders (× 10-3 mm2/s)
Pre-treatment ADC in non-responders (× 10-3 mm2/s)
Post-treatment ADC in responders (× 10-3 mm2/s)
Post-treatment ADC in non-responders (× 10-3 mm2/s)
Key message
De Cobelli et al [46]
2013
Italy
Prospective
23 a
1.5 T
0, 600
Primary tumour
1.32
1.63
2.22
1.51
ADC changes can be considered a reliable indicator of treatment response
Giganti et al [47]
2014
Italy
Prospective
17
1.5 T
0, 600
Primary tumour
1.39
1.67
1.89
1.38
Post-treatment ADC is a good marker of treatment response
Lee et al [44]
2015
Korea
Prospective
11
3.0 T
100, 500, 1000
Primary tumour
1.08 b
1.16 b
NR
NR
ADC is not significantly different between responders and non-responders
Zhong et al [45]
2016
China
Prospective
106
3.0 T
0, 1000
Lymph nodes
1.11 c
1.15 d
1.19 e
NR
1.64 d
1.53 e
ADC can predict nodal response to chemotherapy
MRI magnetic resonance imaging, ROI region of interest, ADC apparent diffusion coefficient, NR not reported
aSubgroup considering Siewert III and gastric cancer
bAveraged between two readers
cComplete response
dPartial response
eStable disease
Lee and colleagues [44] investigated the usefulness of PET/MRI in predicting treatment response for advanced, unresectable gastric cancer in 11 patients. In addition to ADC, SUV and perfusion parameters were calculated prior to chemotherapy. Response to treatment was evaluated on the basis of the response evaluation criteria in solid tumours (RECIST) 1.1 criteria [50]. Differently from perfusion parameters, ADC and SUV were not significantly different between responders and non-responders. However, the lack of both post-treatment imaging and comparison with surgical specimens represents an important limitation of this study.
Zhong and colleagues [45] conducted a study on 106 patients with biopsy-proven gastric cancer undergoing DW-MRI before and after chemotherapy at different time points. Mean ADC was calculated for benign and metastatic lymph nodes, and response to treatment was evaluated on the basis of the RECIST 1.1 criteria [50]. ADC significantly increased after treatment in all groups (complete response, partial response and stable disease group), predicting nodal response to neoadjuvant therapy. These studies support the potential role of DW-MRI in tailoring the therapeutic plan for gastric cancer (Fig. 3).

DW-MRI in the prognosis of gastric cancer

At present, two studies [37, 51] have shown that ADC can be considered a prognostic biomarker for overall survival and risk stratification of gastric cancer, according to the 7th TNM edition [52]. The first study [37] reports that an ADC of 1.8 × 10-3 mm2/s may discriminate between stage I and stage II and that values ≤ 1.36 × 10-3 mm2/s are associated with stage III. The second paper [51] shows that an ADC ≤ 1.5 × 10-3 mm2/s is related to a negative outcome, along with T and N stages after surgery. These results confirm the growing interest that quantitative MR imaging in gastric cancer is gaining in the scientific community [53].

CE-MDCT and imaging biomarkers

Five studies on CE-MDCT were relevant, and they were assessed in full (Fig. 1).

Basic concepts of texture analysis

Texture analysis provides information on the intrinsic variation of pixels within an image. In oncology, this represents a non-invasive method to assess the heterogeneity within a tumour and could reflect its intrinsic aggressive biology or treatment resistance [54, 55]. There are different levels of textural features; these range from first-order statistics (that evaluate the grey-level distribution from pixels in a given area, such as energy, entropy, skewness) to higher-order statistics that investigate the relationship between different voxels [56].
This is a hot topic for quantitative imaging in oncology in order to evaluate lesion characterisation, response to therapy and prognosis [56]. However, there is still marked variability in methods and post-processing techniques in addition to the need to identify the key parameters among hundreds of potential imaging biomarkers from CE-MDCT [56].

A standardised CE-MDCT protocol for adequate texture analysis in gastric cancer

An adequate CE-MDCT scan is crucial to obtain a reliable and reproducible texture analysis for research purposes. As a rule of thumb, the CE-MDCT scan parameters usually applied for gastric cancer are: 120 kVp, 250 mAS, collimation 64 × 0.625 mm, 3 mm helical thickness and 1 mm reconstruction thickness [57]. The first step for an adequate set of images is to ensure a correct distension of the gastric cavity. This can be reached by using negative endoluminal contrast agents (500–750 ml water or gas produced by effervescent granules).
Air filling is more accurate than water filling for tumours of the antrum; this is very important when drawing the regions of interest (ROIs) for texture analysis, as shown in Fig. 4.
The second step is the use of an intravenous/intramuscular anti-peristaltic agent (e.g. scopolamine-N-butyl bromide or glucagone) similarly to DW-MRI. This reduces the mobility of the gastric walls during the scan acquisition so that the ROIs can be drawn on static images and easily compared for texture analysis (Fig. 5). In this regard, the 8th TNM Staging Manual mentions the important role of gastric distention for the staging of gastric cancer [58]. Figure 6 is a set of different CE-MDCT images of gastric cancer acquired using the aforementioned recommendations, allowing accurate ROI delineations for texture analysis.

Texture analysis and gastric cancer

Texture analysis has been receiving much attention in the management of gastric cancer. However, only a few studies have been published on this topic so far [5963], and they are listed in Table 3.
Table 3
Texture analysis and gastric cancer
Study (ref.)
Year
Country
Type of study
No. of patients
ROI selection
CE-MDCT phase
Reference standard
Texture features
Key message
Ba-Ssalamah et al [59]
2013
Austria
Retrospective
47
Single slice
Arterial; venous
Biopsy
2nd order statistics
Texture analysis can differentiate histological subtypes
Giganti et al [62]
2016
Italy
Retrospective
56
Whole tumour
Late arterial
Radical resection
1st and 2nd order statistics
Texture analysis reflects tumour aggressiveness and is related to prognosis
Yoon et al [63]
2016
Korea
Retrospective
26
Single slice
Venous
Biopsy
2nd order statistics
Texture features are associated with better survival in HER2-positive patients receiving trastuzumab
Giganti et al [61]
2017
Italy
Retrospective
34
Whole tumour
Late arterial
Radical resection
1st and 2nd order statistics
Texture analysis provides important information on the response rate to neoadjuvant therapy
Liu et al [60]
2017
China
Retrospective
107
Single slice
Arterial; venous
Radical resection
1st and 2nd order statistics
Texture parameters can predict the degree of differentiation, Lauren classification and vascular invasion
ROI region of interest, CE-MDCT contrast-enhanced multidetector computed tomography, HER human epidermal growth factor receptor
First, there are no specific recommendations regarding the most accurate CE-MDCT phase for texture analysis. Some studies in Table 3 were conducted in the (late) arterial phase [61, 62], while others in the venous phase [63] or in both [59, 60].
However, the administration of intravenous contrast is important for texture analysis, as this allows the quantification of the vascularity before and after treatment and helps assessing the degree of infiltration of the surrounding fat. Texture analysis reflects some tumour features related to tissue heterogeneity at a cellular level; this means that differences at a microscopic level are also detectable macroscopically by CE-MDCT imaging [56].
A closer look at the results in Table 3 reveals that texture analysis can differentiate histological subtypes (adenocarcinoma, lymphoma and gastrointestinal stromal tumours) [59]. Similar results have been published by Liu et al [60]; the authors found that texture parameters can predict the degree of differentiation, Lauren classification and vascular invasion. There is also evidence that textural features can predict treatment response [61] when the response rate is based on TRG [49]. Like DW-MRI, quantitative imaging from texture analysis is associated with the prognosis of untreated [62] and treated [63] gastric cancer. The studies presented in Table 3 offer compelling evidence that CE-MDCT-based texture analysis holds promise in the management of gastric cancer, even though further studies are necessary before widespread application of this technique in common clinical practice.

Limitations

Results so far have been encouraging but have given rise to many questions in need of further investigation as they limit the application of imaging biomarkers in daily clinical practice. First, the large variability in the selection of imaging acquisition parameters for DW-MRI and CE-MDCT (e.g. standardised b values, arterial vs. venous phase) is a considerable challenge. Future studies should aim at standardising data-acquisition protocols as well as validating new methods to extract quantitative parameters from imaging techniques (e.g. ROI assessment).
Second, multicentre trials on large cohorts of patients have yet to be carried out. Focused groups of researchers willing to perform multicentre, international studies are needed to address the key questions related to imaging biomarkers for gastric cancer [64]. The radiological community should continue to play an active role in the academic research by providing valuable expertise to incorporate imaging biomarkers into future clinical trials.

Conclusions

As emerged from this paper, imaging biomarkers are promising tools of modern radiology [65, 66] and could become an essential cornerstone for gastric cancer therapy. Despite these limitations, this review highlights the great potential of ADC and texture analysis for gastric cancer. This is a vital issue for future guidelines, especially in the era of “personalised medicine”, where the goal is to tailor specific treatments for each single patient.

Compliance with ethical standards

Guarantor

The scientific guarantor of this publication is Dr Francesco Giganti.

Conflict of interest

The authors of this manuscript declare no relationships with any companies, whose products or services may be related to the subject matter of the article.

Statistics and biometry

No complex statistical methods were necessary for this paper.
Written informed consent was not required for this study.

Ethical approval

Institutional Review Board approval was not required.

Methodology

• review
• multicentre study
Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.

Unsere Produktempfehlungen

e.Med Interdisziplinär

Kombi-Abonnement

Für Ihren Erfolg in Klinik und Praxis - Die beste Hilfe in Ihrem Arbeitsalltag

Mit e.Med Interdisziplinär erhalten Sie Zugang zu allen CME-Fortbildungen und Fachzeitschriften auf SpringerMedizin.de.

e.Med Radiologie

Kombi-Abonnement

Mit e.Med Radiologie erhalten Sie Zugang zu CME-Fortbildungen des Fachgebietes Radiologie, den Premium-Inhalten der radiologischen Fachzeitschriften, inklusive einer gedruckten Radiologie-Zeitschrift Ihrer Wahl.

Literatur
1.
Zurück zum Zitat Jemal A, Bray F, Center MM, Ferlay J, Ward E, Forman D (2011) Global cancer statistics. CA Cancer J Clin 61(2):69–90CrossRefPubMed Jemal A, Bray F, Center MM, Ferlay J, Ward E, Forman D (2011) Global cancer statistics. CA Cancer J Clin 61(2):69–90CrossRefPubMed
2.
Zurück zum Zitat Amin MB, Edge S, Greene F et al (2017) AJCC cancer staging manual, 8th edn. Springer, New YorkCrossRef Amin MB, Edge S, Greene F et al (2017) AJCC cancer staging manual, 8th edn. Springer, New YorkCrossRef
3.
Zurück zum Zitat Giganti F, Orsenigo E, Arcidiacono PG et al (2016) Preoperative locoregional staging of gastric cancer: is there a place for magnetic resonance imaging? Prospective comparison with EUS and multidetector computed tomography. Gastric Cancer 19(1):216–225PubMedCrossRef Giganti F, Orsenigo E, Arcidiacono PG et al (2016) Preoperative locoregional staging of gastric cancer: is there a place for magnetic resonance imaging? Prospective comparison with EUS and multidetector computed tomography. Gastric Cancer 19(1):216–225PubMedCrossRef
4.
Zurück zum Zitat Richman DM, Tirumani SH, Hornick JL et al (2017) Beyond gastric adenocarcinoma: multimodality assessment of common and uncommon gastric neoplasms. Abdom Radiol (NY) 42(1):124–140CrossRef Richman DM, Tirumani SH, Hornick JL et al (2017) Beyond gastric adenocarcinoma: multimodality assessment of common and uncommon gastric neoplasms. Abdom Radiol (NY) 42(1):124–140CrossRef
5.
Zurück zum Zitat Biomarkers Definitions Working Group (2001) Biomarkers and surrogate endpoints: preferred definitions and conceptual framework. Clin Pharmacol Ther 69(3):89–95CrossRef Biomarkers Definitions Working Group (2001) Biomarkers and surrogate endpoints: preferred definitions and conceptual framework. Clin Pharmacol Ther 69(3):89–95CrossRef
6.
Zurück zum Zitat O’Connor JP, Aboagye EO, Adams JE et al (2017) Imaging biomarker roadmap for cancer studies. Nat Rev Clin Oncol 14(3):169–186PubMedCrossRef O’Connor JP, Aboagye EO, Adams JE et al (2017) Imaging biomarker roadmap for cancer studies. Nat Rev Clin Oncol 14(3):169–186PubMedCrossRef
7.
Zurück zum Zitat European Society of Radioloy (ESR) (2010) White paper on imaging biomarkers. Insights Imaging 1(2):42–45CrossRef European Society of Radioloy (ESR) (2010) White paper on imaging biomarkers. Insights Imaging 1(2):42–45CrossRef
8.
Zurück zum Zitat Buckler AJ, Bresolin L, Dunnick NR, Sullivan DC, Group (2011) A collaborative enterprise for multi-stakeholder participation in the advancement of quantitative imaging. Radiology 258(3):906–914PubMedCrossRef Buckler AJ, Bresolin L, Dunnick NR, Sullivan DC, Group (2011) A collaborative enterprise for multi-stakeholder participation in the advancement of quantitative imaging. Radiology 258(3):906–914PubMedCrossRef
9.
Zurück zum Zitat Obuchowski NA, Reeves AP, Huang EP et al (2015) Quantitative imaging biomarkers: a review of statistical methods for computer algorithm comparisons. Stat Methods Med Res 24(1):68–106PubMedCrossRef Obuchowski NA, Reeves AP, Huang EP et al (2015) Quantitative imaging biomarkers: a review of statistical methods for computer algorithm comparisons. Stat Methods Med Res 24(1):68–106PubMedCrossRef
10.
Zurück zum Zitat Kurland BF, Gerstner ER, Mountz JM et al (2012) Promise and pitfalls of quantitative imaging in oncology clinical trials. Magn Reson Imaging 30(9):1301–1312PubMedPubMedCentralCrossRef Kurland BF, Gerstner ER, Mountz JM et al (2012) Promise and pitfalls of quantitative imaging in oncology clinical trials. Magn Reson Imaging 30(9):1301–1312PubMedPubMedCentralCrossRef
11.
Zurück zum Zitat European Society of Radiology (ESR) (2015) ESR position paper on imaging biobanks. Insights Imaging 6(4):403–410CrossRef European Society of Radiology (ESR) (2015) ESR position paper on imaging biobanks. Insights Imaging 6(4):403–410CrossRef
12.
Zurück zum Zitat European Society of Radiology (ESR) (2013) ESR statement on the stepwise development of imaging biomarkers. Insights Imaging 4(2):147–152CrossRef European Society of Radiology (ESR) (2013) ESR statement on the stepwise development of imaging biomarkers. Insights Imaging 4(2):147–152CrossRef
13.
Zurück zum Zitat Van der Meel R, Gallagher WM, Oliveira S, O’Connor AE, Schiffelers RM, Byrne AT (2010) Recent advances in molecular imaging biomarkers in cancer: application of bench to bedside technologies. Drug Discov Today 15(3-4):102–114PubMedCrossRef Van der Meel R, Gallagher WM, Oliveira S, O’Connor AE, Schiffelers RM, Byrne AT (2010) Recent advances in molecular imaging biomarkers in cancer: application of bench to bedside technologies. Drug Discov Today 15(3-4):102–114PubMedCrossRef
14.
Zurück zum Zitat Yankeelov TE, Abramson RG, Quarles CC (2014) Quantitative multimodality imaging in cancer research and therapy. Nat Rev Clin Oncol 11(11):670–680PubMedPubMedCentralCrossRef Yankeelov TE, Abramson RG, Quarles CC (2014) Quantitative multimodality imaging in cancer research and therapy. Nat Rev Clin Oncol 11(11):670–680PubMedPubMedCentralCrossRef
15.
Zurück zum Zitat Glunde K, Pathak AP, Bhujwalla ZM (2007) Molecular-functional imaging of cancer: to image and imaging. Trends Mol Med 13(7):287–297PubMedCrossRef Glunde K, Pathak AP, Bhujwalla ZM (2007) Molecular-functional imaging of cancer: to image and imaging. Trends Mol Med 13(7):287–297PubMedCrossRef
16.
Zurück zum Zitat Li HH, Zhu H, Yue L et al (2017) Feasibility of free-breathing dynamic contrast-enhanced MRI of gastric cancer using a golden-angle radial stack-of-stars VIBE sequence: comparison with the conventional contrast enhanced breath-hold 3D VIBE sequence. Eur Radiol 28(5):1891–1899PubMedCrossRef Li HH, Zhu H, Yue L et al (2017) Feasibility of free-breathing dynamic contrast-enhanced MRI of gastric cancer using a golden-angle radial stack-of-stars VIBE sequence: comparison with the conventional contrast enhanced breath-hold 3D VIBE sequence. Eur Radiol 28(5):1891–1899PubMedCrossRef
17.
Zurück zum Zitat Ma L, Xu X, Zhang M et al (2017) Dynamic contrast-enhanced MRI of gastric cancer: Correlations of the pharmacokinetic parameters with histological type, Lauren classification, and angiogenesis. Magn Reson Imaging 37:27–32PubMedCrossRef Ma L, Xu X, Zhang M et al (2017) Dynamic contrast-enhanced MRI of gastric cancer: Correlations of the pharmacokinetic parameters with histological type, Lauren classification, and angiogenesis. Magn Reson Imaging 37:27–32PubMedCrossRef
18.
Zurück zum Zitat Jang KM, Kim SH, Lee SJ, Lee MW, Choi D, Kim KM (2014) Upper abdominal gadoxetic acid-enhanced and diffusion-weighted MRI for the detection of gastric cancer: Comparison with two-dimensional multidetector row CT. Clin Radiol 69(8):827–835PubMedCrossRef Jang KM, Kim SH, Lee SJ, Lee MW, Choi D, Kim KM (2014) Upper abdominal gadoxetic acid-enhanced and diffusion-weighted MRI for the detection of gastric cancer: Comparison with two-dimensional multidetector row CT. Clin Radiol 69(8):827–835PubMedCrossRef
19.
Zurück zum Zitat Kang BC, Kim JH, Kim KW et al (2000) Value of the dynamic and delayed MR sequence with Gd-DTPA in the T-staging of stomach cancer: correlation with the histopathology. Abdom Imaging 25(1):14–24PubMedCrossRef Kang BC, Kim JH, Kim KW et al (2000) Value of the dynamic and delayed MR sequence with Gd-DTPA in the T-staging of stomach cancer: correlation with the histopathology. Abdom Imaging 25(1):14–24PubMedCrossRef
20.
Zurück zum Zitat Hallinan JT, Venkatesh SK (2013) Gastric carcinoma: imaging diagnosis, staging and assessment of treatment response. Cancer Imaging 13(2):212–227PubMedPubMedCentralCrossRef Hallinan JT, Venkatesh SK (2013) Gastric carcinoma: imaging diagnosis, staging and assessment of treatment response. Cancer Imaging 13(2):212–227PubMedPubMedCentralCrossRef
21.
Zurück zum Zitat Yoon H, Lee DH (2014) New approaches to gastric cancer staging: beyond endoscopic ultrasound, computed tomography and positron emission tomography. World J Gastroenterol 20(38):13783–13790PubMedPubMedCentralCrossRef Yoon H, Lee DH (2014) New approaches to gastric cancer staging: beyond endoscopic ultrasound, computed tomography and positron emission tomography. World J Gastroenterol 20(38):13783–13790PubMedPubMedCentralCrossRef
22.
Zurück zum Zitat Wu L, Hu J, Hua J, Gu H, Zhu J, Xu J (2012) 18F-fluorodeoxyglucose positron emission tomography to evaluate recurrent gastric cancer: a systematic review and meta-analysis. J Gastroenterol Hepatol 27(3):472–480 Wu L, Hu J, Hua J, Gu H, Zhu J, Xu J (2012) 18F-fluorodeoxyglucose positron emission tomography to evaluate recurrent gastric cancer: a systematic review and meta-analysis. J Gastroenterol Hepatol 27(3):472–480
23.
Zurück zum Zitat Li P, Liu Q, Wang C et al (2016) Fluorine-18-fluorodeoxyglucose positron emission tomography to evaluate recurrent gastric cancer after surgical resection: a systematic review and meta-analysis. Ann Nucl Med 30(3):179–187PubMedCrossRef Li P, Liu Q, Wang C et al (2016) Fluorine-18-fluorodeoxyglucose positron emission tomography to evaluate recurrent gastric cancer after surgical resection: a systematic review and meta-analysis. Ann Nucl Med 30(3):179–187PubMedCrossRef
24.
Zurück zum Zitat Zou H, Zhao Y (2013) 18FDG PET-CT for detecting gastric cancer recurrence after surgical resection: a meta-analysis. Surg Oncol 22(3):162–166PubMedCrossRef Zou H, Zhao Y (2013) 18FDG PET-CT for detecting gastric cancer recurrence after surgical resection: a meta-analysis. Surg Oncol 22(3):162–166PubMedCrossRef
25.
Zurück zum Zitat Hassanzadeh-Rad A, Yousefifard M, Katal S et al (2016) The value of (18) F-fluorodeoxyglucose positron emission tomography for prediction of treatment response in gastrointestinal stromal tumors: a systematic review and meta-analysis. J Gastroenterol Hepatol 31(5):929–935PubMedCrossRef Hassanzadeh-Rad A, Yousefifard M, Katal S et al (2016) The value of (18) F-fluorodeoxyglucose positron emission tomography for prediction of treatment response in gastrointestinal stromal tumors: a systematic review and meta-analysis. J Gastroenterol Hepatol 31(5):929–935PubMedCrossRef
26.
Zurück zum Zitat Elimova E, Wadhwa R, Shiozaki H et al (2015) Molecular biomarkers in gastric cancer. J Natl Compr Canc Netw 13(4):e19–e29PubMedCrossRef Elimova E, Wadhwa R, Shiozaki H et al (2015) Molecular biomarkers in gastric cancer. J Natl Compr Canc Netw 13(4):e19–e29PubMedCrossRef
27.
Zurück zum Zitat Mi L, Ji X, Ji J (2016) Prognostic biomarker in advanced gastric cancer. Transl Gastrointest Cancer 5(1):16–29 Mi L, Ji X, Ji J (2016) Prognostic biomarker in advanced gastric cancer. Transl Gastrointest Cancer 5(1):16–29
28.
Zurück zum Zitat Pinheiro Ddo R, Ferreira WA, Barros MB, Araújo MD, Rodrigues-Antunes S, Borges Bdo N (2014) Perspectives on new biomarkers in gastric cancer: diagnostic and prognostic applications. World J Gastroenterol 20(33):11574–11585PubMedCrossRef Pinheiro Ddo R, Ferreira WA, Barros MB, Araújo MD, Rodrigues-Antunes S, Borges Bdo N (2014) Perspectives on new biomarkers in gastric cancer: diagnostic and prognostic applications. World J Gastroenterol 20(33):11574–11585PubMedCrossRef
29.
Zurück zum Zitat Koh DM, Collins DJ (2007) Diffusion-weighted MRI in the body: applications and challenges in oncology. AJR Am J Roentgenol 188(6):1622–1635PubMedCrossRef Koh DM, Collins DJ (2007) Diffusion-weighted MRI in the body: applications and challenges in oncology. AJR Am J Roentgenol 188(6):1622–1635PubMedCrossRef
30.
Zurück zum Zitat Padhani AR, Liu G, Koh DM et al (2009) Diffusion-weighted magnetic resonance imaging as a cancer biomarker: consensus and recommendations. Neoplasia 11(2):102–125PubMedPubMedCentralCrossRef Padhani AR, Liu G, Koh DM et al (2009) Diffusion-weighted magnetic resonance imaging as a cancer biomarker: consensus and recommendations. Neoplasia 11(2):102–125PubMedPubMedCentralCrossRef
31.
Zurück zum Zitat Sheybani A, Menias CO, Luna A et al (2015) MRI of the stomach: a pictorial review with a focus on oncological applications and gastric motility. Abdom Imaging 40(4):907–930PubMedCrossRef Sheybani A, Menias CO, Luna A et al (2015) MRI of the stomach: a pictorial review with a focus on oncological applications and gastric motility. Abdom Imaging 40(4):907–930PubMedCrossRef
32.
Zurück zum Zitat Luo M, Song H, Liu G et al (2017) Comparison of DWI and 18F-FDG PET/CT for assessing preoperative N-staging in gastric cancer: evidence from a meta-analysis. Oncotarget 8(48):84473–84488PubMedPubMedCentralCrossRef Luo M, Song H, Liu G et al (2017) Comparison of DWI and 18F-FDG PET/CT for assessing preoperative N-staging in gastric cancer: evidence from a meta-analysis. Oncotarget 8(48):84473–84488PubMedPubMedCentralCrossRef
33.
Zurück zum Zitat Arslan H, Fatih Özbay M, Çallı İ et al (2017) Contribution of diffusion weighted MRI to diagnosis and staging in gastric tumors and comparison with multi-detector computed tomography. Radiol Oncol 51(1):23–29PubMedPubMedCentralCrossRef Arslan H, Fatih Özbay M, Çallı İ et al (2017) Contribution of diffusion weighted MRI to diagnosis and staging in gastric tumors and comparison with multi-detector computed tomography. Radiol Oncol 51(1):23–29PubMedPubMedCentralCrossRef
34.
Zurück zum Zitat Liu S, Zheng H, Zhang Y et al (2018) Whole-volume apparent diffusion coefficient-based entropy parameters for assessment of gastric cancer aggressiveness. J Magn Reson Imaging 47(1):168–175PubMedCrossRef Liu S, Zheng H, Zhang Y et al (2018) Whole-volume apparent diffusion coefficient-based entropy parameters for assessment of gastric cancer aggressiveness. J Magn Reson Imaging 47(1):168–175PubMedCrossRef
35.
Zurück zum Zitat Liu S, Wang H, Guan W et al (2015) Preoperative apparent diffusion coefficient value of gastric cancer by diffusion-weighted imaging: correlations with postoperative TNM staging. J Magn Reson Imaging 42(3):837–843PubMedCrossRef Liu S, Wang H, Guan W et al (2015) Preoperative apparent diffusion coefficient value of gastric cancer by diffusion-weighted imaging: correlations with postoperative TNM staging. J Magn Reson Imaging 42(3):837–843PubMedCrossRef
36.
Zurück zum Zitat Liu S, He J, Guan W et al (2014) Added value of diffusion weighted MR imaging to T2-weighted and dynamic contrast-enhanced MR imaging in T staging of gastric cancer. Clin Imaging 38(2):122–128PubMedCrossRef Liu S, He J, Guan W et al (2014) Added value of diffusion weighted MR imaging to T2-weighted and dynamic contrast-enhanced MR imaging in T staging of gastric cancer. Clin Imaging 38(2):122–128PubMedCrossRef
37.
Zurück zum Zitat Giganti F, Ambrosi A, Chiari D et al (2017) Apparent diffusion coefficient by diffusion-weighted magnetic resonance imaging as a sole biomarker for staging and prognosis of gastric cancer. Chin J Cancer Res 29(2):118–126PubMedPubMedCentralCrossRef Giganti F, Ambrosi A, Chiari D et al (2017) Apparent diffusion coefficient by diffusion-weighted magnetic resonance imaging as a sole biomarker for staging and prognosis of gastric cancer. Chin J Cancer Res 29(2):118–126PubMedPubMedCentralCrossRef
38.
Zurück zum Zitat Cheng J, Wang Y, Deng J et al (2013) Discrimination of metastatic lymph nodes in patients with gastric carcinoma using diffusion-weighted imaging. J Magn Reson Imaging 37(6):1436–1444PubMedCrossRef Cheng J, Wang Y, Deng J et al (2013) Discrimination of metastatic lymph nodes in patients with gastric carcinoma using diffusion-weighted imaging. J Magn Reson Imaging 37(6):1436–1444PubMedCrossRef
39.
Zurück zum Zitat Liu S, He J, Guan W et al (2014) Preoperative T staging of gastric cancer: comparison of diffusion- and T2-weighted magnetic resonance imaging. J Comput Assist Tomogr 38:544–550PubMedCrossRef Liu S, He J, Guan W et al (2014) Preoperative T staging of gastric cancer: comparison of diffusion- and T2-weighted magnetic resonance imaging. J Comput Assist Tomogr 38:544–550PubMedCrossRef
40.
Zurück zum Zitat Joo I, Lee JM, Kim H, Shin CI, Han JK, Choi BI (2015) Prospective comparison of 3T MRI with diffusion-weighted imaging and MDCT for the preoperative TNM staging of gastric cancer. J Magn Reson Imaging 41(3):814–821PubMedCrossRef Joo I, Lee JM, Kim H, Shin CI, Han JK, Choi BI (2015) Prospective comparison of 3T MRI with diffusion-weighted imaging and MDCT for the preoperative TNM staging of gastric cancer. J Magn Reson Imaging 41(3):814–821PubMedCrossRef
41.
Zurück zum Zitat Zhong L, Zhao W, Ren F et al (2016) Lymph node metastasis in patients with gastric cancer: a multi-modality, morphologic and functional imaging study. Am J Transl Res 8(12):5601–5609PubMedPubMedCentral Zhong L, Zhao W, Ren F et al (2016) Lymph node metastasis in patients with gastric cancer: a multi-modality, morphologic and functional imaging study. Am J Transl Res 8(12):5601–5609PubMedPubMedCentral
42.
Zurück zum Zitat Hasbahceci M, Akcakaya A, Memmi N et al (2015) Diffusion MRI on lymph node staging of gastric adenocarcinoma. Quant Imaging Med Surg 5(3):392–400PubMedPubMedCentral Hasbahceci M, Akcakaya A, Memmi N et al (2015) Diffusion MRI on lymph node staging of gastric adenocarcinoma. Quant Imaging Med Surg 5(3):392–400PubMedPubMedCentral
43.
Zurück zum Zitat Liu S, Zhang Y, Chen L et al (2017) Whole-lesion apparent diffusion coefficient histogram analysis: significance in T and N staging of gastric cancers. BMC Cancer 17(1):665PubMedPubMedCentralCrossRef Liu S, Zhang Y, Chen L et al (2017) Whole-lesion apparent diffusion coefficient histogram analysis: significance in T and N staging of gastric cancers. BMC Cancer 17(1):665PubMedPubMedCentralCrossRef
44.
Zurück zum Zitat Lee DH, Kim SH, Im SA, Oh DY, Kim TY, Han JK (2016) Multiparametric fully-integrated 18-FDG PET/MRI of advanced gastric cancer for prediction of chemotherapy response: a preliminary study. Eur Radiol 26(8):2771–2778PubMedCrossRef Lee DH, Kim SH, Im SA, Oh DY, Kim TY, Han JK (2016) Multiparametric fully-integrated 18-FDG PET/MRI of advanced gastric cancer for prediction of chemotherapy response: a preliminary study. Eur Radiol 26(8):2771–2778PubMedCrossRef
45.
Zurück zum Zitat Zhong J, Zhao W, Ma W et al (2016) DWI as a quantitative biomarker in predicting chemotherapeutic efficacy at multitime points on gastric cancer lymph nodes metastases. Medicine (Baltimore) 95(13):e3236CrossRef Zhong J, Zhao W, Ma W et al (2016) DWI as a quantitative biomarker in predicting chemotherapeutic efficacy at multitime points on gastric cancer lymph nodes metastases. Medicine (Baltimore) 95(13):e3236CrossRef
46.
Zurück zum Zitat De Cobelli F, Giganti F, Orsenigo E et al (2013) Apparent diffusion coefficient modifications in assessing gastro-oesophageal cancer response to neoadjuvant treatment: comparison with tumour regression grade at histology. Eur Radiol 23(8):2165–2174PubMedCrossRef De Cobelli F, Giganti F, Orsenigo E et al (2013) Apparent diffusion coefficient modifications in assessing gastro-oesophageal cancer response to neoadjuvant treatment: comparison with tumour regression grade at histology. Eur Radiol 23(8):2165–2174PubMedCrossRef
47.
Zurück zum Zitat Giganti F, De Cobelli F, Canevari C et al (2014) Response to chemotherapy in gastric adenocarcinoma with diffusion-weighted MRI and (18) F-FDG-PET/CT: correlation of apparent diffusion coefficient and partial volume corrected standardized uptake value with histological tumor regression grade. J Magn Reson Imaging 40(5):1147–1157PubMedCrossRef Giganti F, De Cobelli F, Canevari C et al (2014) Response to chemotherapy in gastric adenocarcinoma with diffusion-weighted MRI and (18) F-FDG-PET/CT: correlation of apparent diffusion coefficient and partial volume corrected standardized uptake value with histological tumor regression grade. J Magn Reson Imaging 40(5):1147–1157PubMedCrossRef
48.
Zurück zum Zitat Consolino L, Longo DL, Sciortino M et al (2017) Assessing tumor vascularization as a potential biomarker of imatinib resistance in gastrointestinal stromal tumors by dynamic contrast-enhanced magnetic resonance imaging. Gastric Cancer 20(4):629–639PubMedCrossRef Consolino L, Longo DL, Sciortino M et al (2017) Assessing tumor vascularization as a potential biomarker of imatinib resistance in gastrointestinal stromal tumors by dynamic contrast-enhanced magnetic resonance imaging. Gastric Cancer 20(4):629–639PubMedCrossRef
49.
Zurück zum Zitat Blackham AU, Greenleaf E, Yamamoto M et al (2016) Tumor regression grade in gastric cancer: predictors and impact on outcome. J Surg Oncol 114(4):434–439PubMedCrossRef Blackham AU, Greenleaf E, Yamamoto M et al (2016) Tumor regression grade in gastric cancer: predictors and impact on outcome. J Surg Oncol 114(4):434–439PubMedCrossRef
50.
Zurück zum Zitat Eisenhauer EA, Therasse P, Bogaerts J et al (2009) New response evaluation criteria in solid tumors: revised RECIST guideline (version 1.1). Eur J Cancer 45(2):228–247PubMedCrossRef Eisenhauer EA, Therasse P, Bogaerts J et al (2009) New response evaluation criteria in solid tumors: revised RECIST guideline (version 1.1). Eur J Cancer 45(2):228–247PubMedCrossRef
51.
Zurück zum Zitat Giganti F, Orsenigo E, Esposito A et al (2015) Prognostic role of diffusion-weighted MR imaging for resectable gastric cancer. Radiology 276(2):444–452PubMedCrossRef Giganti F, Orsenigo E, Esposito A et al (2015) Prognostic role of diffusion-weighted MR imaging for resectable gastric cancer. Radiology 276(2):444–452PubMedCrossRef
52.
Zurück zum Zitat Edge SB, Byrd DR, Compton CC, Fritz AG, Greene F, Trotti A (2010) AJCC Cancer Staging Manual, 7th edn. Springer, New York Edge SB, Byrd DR, Compton CC, Fritz AG, Greene F, Trotti A (2010) AJCC Cancer Staging Manual, 7th edn. Springer, New York
53.
Zurück zum Zitat Mills AF, Sakai O, Anderson SW, Jara H (2017) Principles of quantitative MR imaging with illustrated review of applicable modular pulse diagrams. Radiographics 37(7):2083–2105PubMedCrossRef Mills AF, Sakai O, Anderson SW, Jara H (2017) Principles of quantitative MR imaging with illustrated review of applicable modular pulse diagrams. Radiographics 37(7):2083–2105PubMedCrossRef
55.
Zurück zum Zitat Davnall F, Yip CS, Ljungqvist G et al (2012) Assessment of tumor heterogeneity: an emerging imaging tool for clinical practice? Insights Imaging 3(6):573–589PubMedPubMedCentralCrossRef Davnall F, Yip CS, Ljungqvist G et al (2012) Assessment of tumor heterogeneity: an emerging imaging tool for clinical practice? Insights Imaging 3(6):573–589PubMedPubMedCentralCrossRef
56.
Zurück zum Zitat Lubner MG, Smith AD, Sandrasegaran K, Sahani DV, Pickhardt PJ (2017) CT texture analysis: definitions, applications, biologic correlates, and challenges. Radiographics 37(5):1483–1503PubMedCrossRef Lubner MG, Smith AD, Sandrasegaran K, Sahani DV, Pickhardt PJ (2017) CT texture analysis: definitions, applications, biologic correlates, and challenges. Radiographics 37(5):1483–1503PubMedCrossRef
57.
58.
Zurück zum Zitat Amin MB, Edge S, Greene F et al (2016) Stomach - Chapter 17. In: American Joint Committee on Cancer (AJCC) Cancer Staging Manual, 8th edn. Springer, New York, pp 203–220 Amin MB, Edge S, Greene F et al (2016) Stomach - Chapter 17. In: American Joint Committee on Cancer (AJCC) Cancer Staging Manual, 8th edn. Springer, New York, pp 203–220
59.
Zurück zum Zitat Ba-Ssalamah A, Muin D, Schernthaner R et al (2013) Texture-based classification of different gastric tumors at contrast-enhanced CT. Eur J Radiol 82(10):e537–e543PubMedCrossRef Ba-Ssalamah A, Muin D, Schernthaner R et al (2013) Texture-based classification of different gastric tumors at contrast-enhanced CT. Eur J Radiol 82(10):e537–e543PubMedCrossRef
60.
Zurück zum Zitat Liu S, Liu S, Ji C et al (2017) Application of CT texture analysis in predicting histopathological characteristics of gastric cancers. Eur Radiol 27(12):4951–4959PubMedCrossRef Liu S, Liu S, Ji C et al (2017) Application of CT texture analysis in predicting histopathological characteristics of gastric cancers. Eur Radiol 27(12):4951–4959PubMedCrossRef
61.
Zurück zum Zitat Giganti F, Marra P, Ambrosi A et al (2017) Pre-treatment MDCT-based texture analysis for therapy response prediction in gastric cancer: Comparison with tumour regression grade at final histology. Eur J Radiol 90:129–137PubMedCrossRef Giganti F, Marra P, Ambrosi A et al (2017) Pre-treatment MDCT-based texture analysis for therapy response prediction in gastric cancer: Comparison with tumour regression grade at final histology. Eur J Radiol 90:129–137PubMedCrossRef
62.
Zurück zum Zitat Giganti F, Antunes S, Salerno A et al (2017) Gastric cancer: texture analysis from multidetector computed tomography as a potential preoperative prognostic biomarker. Eur Radiol 27(5):1831–1839PubMedCrossRef Giganti F, Antunes S, Salerno A et al (2017) Gastric cancer: texture analysis from multidetector computed tomography as a potential preoperative prognostic biomarker. Eur Radiol 27(5):1831–1839PubMedCrossRef
63.
Zurück zum Zitat Yoon SH, Kim YH, Lee YJ et al (2016) Tumor heterogeneity in human epidermal growth factor receptor 2 (HER2)-positive advanced gastric cancer assessed by CT texture analysis: association with survival after trastuzumab treatment. PLoS One 11(8):e0161278PubMedPubMedCentralCrossRef Yoon SH, Kim YH, Lee YJ et al (2016) Tumor heterogeneity in human epidermal growth factor receptor 2 (HER2)-positive advanced gastric cancer assessed by CT texture analysis: association with survival after trastuzumab treatment. PLoS One 11(8):e0161278PubMedPubMedCentralCrossRef
64.
Zurück zum Zitat deSouza NM, Winfield JM, Waterton JC et al (2018) Implementing diffusion-weighted MRI for body imaging in prospective multicentre trials: current considerations and future perspectives. Eur Radiol 28(3):1118–1131PubMedCrossRef deSouza NM, Winfield JM, Waterton JC et al (2018) Implementing diffusion-weighted MRI for body imaging in prospective multicentre trials: current considerations and future perspectives. Eur Radiol 28(3):1118–1131PubMedCrossRef
65.
Zurück zum Zitat Waterton JC, McShane LM, O’Connor JPB (2017) Imaging biomarkers exist and they underpin clinical decision-making. Nat Rev Clin Oncol 14(7):452PubMedCrossRef Waterton JC, McShane LM, O’Connor JPB (2017) Imaging biomarkers exist and they underpin clinical decision-making. Nat Rev Clin Oncol 14(7):452PubMedCrossRef
66.
Metadaten
Titel
Gastric cancer and imaging biomarkers: Part 1 – a critical review of DW-MRI and CE-MDCT findings
verfasst von
Francesco Giganti
Lei Tang
Hideo Baba
Publikationsdatum
02.10.2018
Verlag
Springer Berlin Heidelberg
Erschienen in
European Radiology / Ausgabe 4/2019
Print ISSN: 0938-7994
Elektronische ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-018-5732-4

Weitere Artikel der Ausgabe 4/2019

European Radiology 4/2019 Zur Ausgabe

Mammakarzinom: Brustdichte beeinflusst rezidivfreies Überleben

26.05.2024 Mammakarzinom Nachrichten

Frauen, die zum Zeitpunkt der Brustkrebsdiagnose eine hohe mammografische Brustdichte aufweisen, haben ein erhöhtes Risiko für ein baldiges Rezidiv, legen neue Daten nahe.

„Übersichtlicher Wegweiser“: Lauterbachs umstrittener Klinik-Atlas ist online

17.05.2024 Klinik aktuell Nachrichten

Sie sei „ethisch geboten“, meint Gesundheitsminister Karl Lauterbach: mehr Transparenz über die Qualität von Klinikbehandlungen. Um sie abzubilden, lässt er gegen den Widerstand vieler Länder einen virtuellen Klinik-Atlas freischalten.

Klinikreform soll zehntausende Menschenleben retten

15.05.2024 Klinik aktuell Nachrichten

Gesundheitsminister Lauterbach hat die vom Bundeskabinett beschlossene Klinikreform verteidigt. Kritik an den Plänen kommt vom Marburger Bund. Und in den Ländern wird über den Gang zum Vermittlungsausschuss spekuliert.

Darf man die Behandlung eines Neonazis ablehnen?

08.05.2024 Gesellschaft Nachrichten

In einer Leseranfrage in der Zeitschrift Journal of the American Academy of Dermatology möchte ein anonymer Dermatologe bzw. eine anonyme Dermatologin wissen, ob er oder sie einen Patienten behandeln muss, der eine rassistische Tätowierung trägt.

Update Radiologie

Bestellen Sie unseren Fach-Newsletter und bleiben Sie gut informiert.