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Erschienen in: Neuroradiology 12/2019

02.08.2019 | Diagnostic Neuroradiology

Prediction of high proliferative index in pituitary macroadenomas using MRI-based radiomics and machine learning

verfasst von: Lorenzo Ugga, Renato Cuocolo, Domenico Solari, Elia Guadagno, Alessandra D’Amico, Teresa Somma, Paolo Cappabianca, Maria Laura del Basso de Caro, Luigi Maria Cavallo, Arturo Brunetti

Erschienen in: Neuroradiology | Ausgabe 12/2019

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Abstract

Purpose

Pituitary adenomas are among the most frequent intracranial tumors. They may exhibit clinically aggressive behavior, with recurrent disease and resistance to multimodal therapy. The ki-67 labeling index represents a proliferative marker which correlates with pituitary adenoma aggressiveness. Aim of our study was to assess the accuracy of machine learning analysis of texture-derived parameters from pituitary adenomas preoperative MRI for the prediction of ki-67 proliferation index class.

Methods

A total of 89 patients who underwent an endoscopic endonasal procedure for pituitary adenoma removal with available ki-67 labeling index were included. From T2w MR images, 1128 quantitative imaging features were extracted. To select the most informative features, different supervised feature selection methods were employed. Subsequently, a k-nearest neighbors (k-NN) classifier was employed to predict macroadenoma high or low proliferation index. Algorithm validation was performed with a train-test approach.

Results

Of the 12 subsets derived from feature selection, the best performing one was constituted by the 4 highest correlating parameters at Pearson’s test. These all showed very good (ICC ≥ 0.85) inter-observer reproducibility. The overall accuracy of the k-NN in the test group was of 91.67% (33/36) of correctly classified patients.

Conclusions

Machine learning analysis of texture-derived parameters from preoperative T2 MRI has proven to be effective for the prediction of pituitary macroadenomas ki-67 proliferation index class. This might aid the surgical strategy making a more accurate preoperative lesion classification and allow for a more focused and cost-effective follow-up and long-term management.
Literatur
14.
Zurück zum Zitat Romeo V, Ricciardi C, Cuocolo R, Stanzione A, Verde F, Sarno L, Improta G, Mainenti PP, D’Armiento M, Brunetti A, Maurea S (2019) Machine learning analysis of MRI-derived texture features to predict placenta accreta spectrum in patients with placenta previa. Magn Reson Imaging. https://doi.org/10.1016/j.mri.2019.05.017 Romeo V, Ricciardi C, Cuocolo R, Stanzione A, Verde F, Sarno L, Improta G, Mainenti PP, D’Armiento M, Brunetti A, Maurea S (2019) Machine learning analysis of MRI-derived texture features to predict placenta accreta spectrum in patients with placenta previa. Magn Reson Imaging. https://​doi.​org/​10.​1016/​j.​mri.​2019.​05.​017
16.
Zurück zum Zitat de Notaris M, Solari D, Cavallo LM, D’Enza AI, Enseñat J, Berenguer J, Ferrer E, Prats-Galino A, Cappabianca P (2012) The “suprasellar notch,” or the tuberculum sellae as seen from below: definition, features, and clinical implications from an endoscopic endonasal perspective. J Neurosurg 116:622–629. https://doi.org/10.3171/2011.11.JNS111162 CrossRefPubMed de Notaris M, Solari D, Cavallo LM, D’Enza AI, Enseñat J, Berenguer J, Ferrer E, Prats-Galino A, Cappabianca P (2012) The “suprasellar notch,” or the tuberculum sellae as seen from below: definition, features, and clinical implications from an endoscopic endonasal perspective. J Neurosurg 116:622–629. https://​doi.​org/​10.​3171/​2011.​11.​JNS111162 CrossRefPubMed
17.
Zurück zum Zitat Kassam A, Snyderman CH, Mintz A, et al (2005) Expanded endonasal approach: the rostrocaudal axis. Part I. Crista galli to the sella turcica. Neurosurg Focus Kassam A, Snyderman CH, Mintz A, et al (2005) Expanded endonasal approach: the rostrocaudal axis. Part I. Crista galli to the sella turcica. Neurosurg Focus
19.
Zurück zum Zitat Cappabianca P, Cavallo LM, Esposito F, de Divitiis O, Messina A, de Divitiis E (2008) Extended endoscopic endonasal approach to the midline skull base: the evolving role of transsphenoidal surgery. In: Pickard JD, Akalan N, Di Rocco C et al (eds) Advances and technical standards in neurosurgery. Springer Vienna, Vienna, pp 151–199CrossRef Cappabianca P, Cavallo LM, Esposito F, de Divitiis O, Messina A, de Divitiis E (2008) Extended endoscopic endonasal approach to the midline skull base: the evolving role of transsphenoidal surgery. In: Pickard JD, Akalan N, Di Rocco C et al (eds) Advances and technical standards in neurosurgery. Springer Vienna, Vienna, pp 151–199CrossRef
29.
Zurück zum Zitat Eibe F, Hall MA, Witten IH (2016) The WEKA Workbench. Online Appendix for “Data Mining: Practical Machine Learning Tools and Techniques,” Fourth Edi. Morgan Kaufmann Eibe F, Hall MA, Witten IH (2016) The WEKA Workbench. Online Appendix for “Data Mining: Practical Machine Learning Tools and Techniques,” Fourth Edi. Morgan Kaufmann
36.
Zurück zum Zitat Vasiljevic A, Jouanneau E, Trouillas J, Raverot G (2016) Clinicopathological prognostic and theranostic markers in pituitary tumors. Minerva Endocrinol 41:377–389PubMed Vasiljevic A, Jouanneau E, Trouillas J, Raverot G (2016) Clinicopathological prognostic and theranostic markers in pituitary tumors. Minerva Endocrinol 41:377–389PubMed
46.
Zurück zum Zitat Sanei Taheri M, Kimia F, Mehrnahad M, Saligheh Rad H, Haghighatkhah H, Moradi A, Kazerooni AF, Alviri M, Absalan A (2019) Accuracy of diffusion-weighted imaging-magnetic resonance in differentiating functional from non-functional pituitary macro-adenoma and classification of tumor consistency. Neuroradiol J 32:74–85. https://doi.org/10.1177/1971400918809825 CrossRefPubMed Sanei Taheri M, Kimia F, Mehrnahad M, Saligheh Rad H, Haghighatkhah H, Moradi A, Kazerooni AF, Alviri M, Absalan A (2019) Accuracy of diffusion-weighted imaging-magnetic resonance in differentiating functional from non-functional pituitary macro-adenoma and classification of tumor consistency. Neuroradiol J 32:74–85. https://​doi.​org/​10.​1177/​1971400918809825​ CrossRefPubMed
47.
Zurück zum Zitat Wei L, Lin S-A, Fan K et al (2015) Relationship between pituitary adenoma texture and collagen content revealed by comparative study of MRI and pathology analysis. Int J Clin Exp Med 8:12898–12905PubMedPubMedCentral Wei L, Lin S-A, Fan K et al (2015) Relationship between pituitary adenoma texture and collagen content revealed by comparative study of MRI and pathology analysis. Int J Clin Exp Med 8:12898–12905PubMedPubMedCentral
48.
Zurück zum Zitat Zeynalova A, Kocak B, Durmaz ES, Comunoglu N, Ozcan K, Ozcan G, Turk O, Tanriover N, Kocer N, Kizilkilic O, Islak C (2019) Preoperative evaluation of tumour consistency in pituitary macroadenomas: a machine learning-based histogram analysis on conventional T2-weighted MRI. Neuroradiology 61:767–774. https://doi.org/10.1007/s00234-019-02211-2 CrossRefPubMed Zeynalova A, Kocak B, Durmaz ES, Comunoglu N, Ozcan K, Ozcan G, Turk O, Tanriover N, Kocer N, Kizilkilic O, Islak C (2019) Preoperative evaluation of tumour consistency in pituitary macroadenomas: a machine learning-based histogram analysis on conventional T2-weighted MRI. Neuroradiology 61:767–774. https://​doi.​org/​10.​1007/​s00234-019-02211-2 CrossRefPubMed
50.
Zurück zum Zitat Kocak B, Durmaz ES, Kadioglu P, Polat Korkmaz O, Comunoglu N, Tanriover N, Kocer N, Islak C, Kizilkilic O (2019) Predicting response to somatostatin analogues in acromegaly: machine learning-based high-dimensional quantitative texture analysis on T2-weighted MRI. Eur Radiol 29:2731–2739. https://doi.org/10.1007/s00330-018-5876-2 CrossRefPubMed Kocak B, Durmaz ES, Kadioglu P, Polat Korkmaz O, Comunoglu N, Tanriover N, Kocer N, Islak C, Kizilkilic O (2019) Predicting response to somatostatin analogues in acromegaly: machine learning-based high-dimensional quantitative texture analysis on T2-weighted MRI. Eur Radiol 29:2731–2739. https://​doi.​org/​10.​1007/​s00330-018-5876-2 CrossRefPubMed
Metadaten
Titel
Prediction of high proliferative index in pituitary macroadenomas using MRI-based radiomics and machine learning
verfasst von
Lorenzo Ugga
Renato Cuocolo
Domenico Solari
Elia Guadagno
Alessandra D’Amico
Teresa Somma
Paolo Cappabianca
Maria Laura del Basso de Caro
Luigi Maria Cavallo
Arturo Brunetti
Publikationsdatum
02.08.2019
Verlag
Springer Berlin Heidelberg
Erschienen in
Neuroradiology / Ausgabe 12/2019
Print ISSN: 0028-3940
Elektronische ISSN: 1432-1920
DOI
https://doi.org/10.1007/s00234-019-02266-1

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