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Erschienen in: Journal of Digital Imaging 4/2020

28.05.2020 | Methods Paper

An Open-Source, Vender Agnostic Hardware and Software Pipeline for Integration of Artificial Intelligence in Radiology Workflow

verfasst von: Jae Ho Sohn, Yeshwant Reddy Chillakuru, Stanley Lee, Amie Y Lee, Tatiana Kelil, Christopher Paul Hess, Youngho Seo, Thienkhai Vu, Bonnie N Joe

Erschienen in: Journal of Imaging Informatics in Medicine | Ausgabe 4/2020

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Abstract

Although machine learning (ML) has made significant improvements in radiology, few algorithms have been integrated into clinical radiology workflow. Complex radiology IT environments and Picture Archiving and Communication System (PACS) pose unique challenges in creating a practical ML schema. However, clinical integration and testing are critical to ensuring the safety and accuracy of ML algorithms. This study aims to propose, develop, and demonstrate a simple, efficient, and understandable hardware and software system for integrating ML models into the standard radiology workflow and PACS that can serve as a framework for testing ML algorithms. A Digital Imaging and Communications in Medicine/Graphics Processing Unit (DICOM/GPU) server and software pipeline was established at a metropolitan county hospital intranet to demonstrate clinical integration of ML algorithms in radiology. A clinical ML integration schema, agnostic to the hospital IT system and specific ML models/frameworks, was implemented and tested with a breast density classification algorithm and prospectively evaluated for time delays using 100 digital 2D mammograms. An open-source clinical ML integration schema was successfully implemented and demonstrated. This schema allows for simple uploading of custom ML models. With the proposed setup, the ML pipeline took an average of 26.52 s per second to process a batch of 100 studies. The most significant processing time delays were noted in model load and study stability times. The code is made available at “http://​bit.​ly/​2Z121hX”. We demonstrated the feasibility to deploy and utilize ML models in radiology without disrupting existing radiology workflow.
Literatur
1.
Zurück zum Zitat Choy G, Khalilzadeh O, Michalski M, et al: Current Applications and Future Impact of Machine Learning in Radiology. Radiology 288(2):318–328,2018.PubMedCrossRef Choy G, Khalilzadeh O, Michalski M, et al: Current Applications and Future Impact of Machine Learning in Radiology. Radiology 288(2):318–328,2018.PubMedCrossRef
2.
Zurück zum Zitat Ding Y, Sohn JH, Kawczynski MG, et al: A Deep Learning Model to Predict a Diagnosis of Alzheimer Disease by Using 18F-FDG PET of the Brain. Radiology 290(2):456–464,2018.PubMedCrossRef Ding Y, Sohn JH, Kawczynski MG, et al: A Deep Learning Model to Predict a Diagnosis of Alzheimer Disease by Using 18F-FDG PET of the Brain. Radiology 290(2):456–464,2018.PubMedCrossRef
3.
Zurück zum Zitat Kallenberg M, Petersen K, Nielsen M, et al: Unsupervised Deep Learning Applied to Breast Density Segmentation and Mammographic Risk Scoring. IEEE Trans Med Imaging 35(5):1322–1331,2016.PubMedCrossRef Kallenberg M, Petersen K, Nielsen M, et al: Unsupervised Deep Learning Applied to Breast Density Segmentation and Mammographic Risk Scoring. IEEE Trans Med Imaging 35(5):1322–1331,2016.PubMedCrossRef
4.
Zurück zum Zitat Polan DF, Brady SL, Kaufman RA: Tissue segmentation of computed tomography images using a Random Forest algorithm: a feasibility study. Phys Med Biol 61(17):6553–6569,2016.PubMedPubMedCentralCrossRef Polan DF, Brady SL, Kaufman RA: Tissue segmentation of computed tomography images using a Random Forest algorithm: a feasibility study. Phys Med Biol 61(17):6553–6569,2016.PubMedPubMedCentralCrossRef
5.
Zurück zum Zitat Pedoia V, Majumdar S, Link TM: Segmentation of joint and musculoskeletal tissue in the study of arthritis. Magn Reson Mater Phys Biol Med 29(2):207–221,2016.CrossRef Pedoia V, Majumdar S, Link TM: Segmentation of joint and musculoskeletal tissue in the study of arthritis. Magn Reson Mater Phys Biol Med 29(2):207–221,2016.CrossRef
6.
Zurück zum Zitat Bickelhaupt S, Paech D, Kickingereder P, et al: Prediction of malignancy by a radiomic signature from contrast agent-free diffusion MRI in suspicious breast lesions found on screening mammography. J Magn Reson Imaging 46(2):604–616,2017.PubMedCrossRef Bickelhaupt S, Paech D, Kickingereder P, et al: Prediction of malignancy by a radiomic signature from contrast agent-free diffusion MRI in suspicious breast lesions found on screening mammography. J Magn Reson Imaging 46(2):604–616,2017.PubMedCrossRef
7.
Zurück zum Zitat McDonald RJ, Schwartz KM, Eckel LJ, et al: The effects of changes in utilization and technological advancements of cross-sectional imaging on radiologist workload. Acad Radiol 22(9):1191–1198,2015.PubMedCrossRef McDonald RJ, Schwartz KM, Eckel LJ, et al: The effects of changes in utilization and technological advancements of cross-sectional imaging on radiologist workload. Acad Radiol 22(9):1191–1198,2015.PubMedCrossRef
9.
Zurück zum Zitat Chokshi FH, Flanders AE, Prevedello LM, Langlotz CP: Fostering a Healthy AI Ecosystem for Radiology: Conclusions of the 2018 RSNA Summit on AI in Radiology. Radiol Artif Intell 1(2):190021,2019.CrossRefPubMedPubMedCentral Chokshi FH, Flanders AE, Prevedello LM, Langlotz CP: Fostering a Healthy AI Ecosystem for Radiology: Conclusions of the 2018 RSNA Summit on AI in Radiology. Radiol Artif Intell 1(2):190021,2019.CrossRefPubMedPubMedCentral
10.
Zurück zum Zitat Berkowitz SJ, Wei JL, Halabi S: Migrating to the Modern PACS: Challenges and Opportunities. RadioGraphics 38(6):1761–1772,2018.PubMedCrossRef Berkowitz SJ, Wei JL, Halabi S: Migrating to the Modern PACS: Challenges and Opportunities. RadioGraphics 38(6):1761–1772,2018.PubMedCrossRef
13.
Zurück zum Zitat Abràmoff MD, Lavin PT, Birch M, Shah N, Folk JC: Pivotal trial of an autonomous AI-based diagnostic system for detection of diabetic retinopathy in primary care offices. Npj Digit Med 1(1):39,2018.PubMedPubMedCentralCrossRef Abràmoff MD, Lavin PT, Birch M, Shah N, Folk JC: Pivotal trial of an autonomous AI-based diagnostic system for detection of diabetic retinopathy in primary care offices. Npj Digit Med 1(1):39,2018.PubMedPubMedCentralCrossRef
14.
Zurück zum Zitat Kanagasingam Y, Xiao D, Vignarajan J, Preetham A, Tay-Kearney M-L, Mehrotra A: Evaluation of Artificial Intelligence–Based Grading of Diabetic Retinopathy in Primary Care. JAMA Netw Open 1(5):e182665,2018.PubMedPubMedCentralCrossRef Kanagasingam Y, Xiao D, Vignarajan J, Preetham A, Tay-Kearney M-L, Mehrotra A: Evaluation of Artificial Intelligence–Based Grading of Diabetic Retinopathy in Primary Care. JAMA Netw Open 1(5):e182665,2018.PubMedPubMedCentralCrossRef
15.
Zurück zum Zitat Topol EJ: High-performance medicine: the convergence of human and artificial intelligence. Nat Med 25(1):44,2019.PubMedCrossRef Topol EJ: High-performance medicine: the convergence of human and artificial intelligence. Nat Med 25(1):44,2019.PubMedCrossRef
16.
Zurück zum Zitat Gianfrancesco MA, Tamang S, Yazdany J, Schmajuk G: Potential Biases in Machine Learning Algorithms Using Electronic Health Record Data. JAMA Intern Med 178(11):1544–1547,2018.PubMedPubMedCentralCrossRef Gianfrancesco MA, Tamang S, Yazdany J, Schmajuk G: Potential Biases in Machine Learning Algorithms Using Electronic Health Record Data. JAMA Intern Med 178(11):1544–1547,2018.PubMedPubMedCentralCrossRef
17.
Zurück zum Zitat Heydari A, Lituiev D, Vu TH, Seo Y, Sohn JH: A DICOM-embedded Annotation System for 3D Cross-sectional Imaging Data. Abstr Radiol Soc N Am,2019. Heydari A, Lituiev D, Vu TH, Seo Y, Sohn JH: A DICOM-embedded Annotation System for 3D Cross-sectional Imaging Data. Abstr Radiol Soc N Am,2019.
Metadaten
Titel
An Open-Source, Vender Agnostic Hardware and Software Pipeline for Integration of Artificial Intelligence in Radiology Workflow
verfasst von
Jae Ho Sohn
Yeshwant Reddy Chillakuru
Stanley Lee
Amie Y Lee
Tatiana Kelil
Christopher Paul Hess
Youngho Seo
Thienkhai Vu
Bonnie N Joe
Publikationsdatum
28.05.2020
Verlag
Springer International Publishing
Erschienen in
Journal of Imaging Informatics in Medicine / Ausgabe 4/2020
Print ISSN: 2948-2925
Elektronische ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-020-00348-8

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