Machine Learning Augmented Interpretation of Chest X-rays: A Systematic Review

被引:17
作者
Ahmad, Hassan K. [1 ,2 ]
Milne, Michael R. [1 ]
Buchlak, Quinlan D. [1 ,3 ,4 ]
Ektas, Nalan [1 ]
Sanderson, Georgina [1 ]
Chamtie, Hadi [1 ]
Karunasena, Sajith [1 ]
Chiang, Jason [1 ,5 ,6 ]
Holt, Xavier [1 ]
Tang, Cyril H. M. [1 ]
Seah, Jarrel C. Y. [1 ,7 ]
Bottrell, Georgina [1 ]
Esmaili, Nazanin [3 ,8 ]
Brotchie, Peter [1 ,9 ]
Jones, Catherine [1 ,10 ,11 ,12 ]
机构
[1] Annalise Ai, Sydney, NSW 2000, Australia
[2] Royal North Shore Hosp, Dept Emergency Med, Sydney, NSW 2065, Australia
[3] Univ Notre Dame Australia, Sch Med, Sydney, NSW 2007, Australia
[4] Monash Hlth, Dept Neurosurg, Melbourne, Vic 3168, Australia
[5] Univ Melbourne, Dept Gen Practice, Melbourne, Vic 3010, Australia
[6] Univ Sydney, Westmead Appl Res Ctr, Sydney, NSW 2006, Australia
[7] Alfred Hlth, Dept Radiol, Melbourne, Vic 3004, Australia
[8] Univ Technol Sydney, Fac Engn & Informat Technol, Sydney, NSW 2007, Australia
[9] St Vincents Hlth Australia, Dept Radiol, Melbourne, Vic 3065, Australia
[10] I MED Radiol Network, Brisbane, Qld 4006, Australia
[11] Monash Univ, Sch Publ & Prevent Hlth, Clayton, Vic 3800, Australia
[12] Univ Sydney, Dept Clin Imaging Sci, Sydney, NSW 2006, Australia
关键词
machine learning; chest X-ray; deep learning; radiology; RADIOLOGY; IMPLEMENTATION; DIAGNOSIS; NETWORK; HISTORY; LUNG; BIAS;
D O I
10.3390/diagnostics13040743
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Limitations of the chest X-ray (CXR) have resulted in attempts to create machine learning systems to assist clinicians and improve interpretation accuracy. An understanding of the capabilities and limitations of modern machine learning systems is necessary for clinicians as these tools begin to permeate practice. This systematic review aimed to provide an overview of machine learning applications designed to facilitate CXR interpretation. A systematic search strategy was executed to identify research into machine learning algorithms capable of detecting >2 radiographic findings on CXRs published between January 2020 and September 2022. Model details and study characteristics, including risk of bias and quality, were summarized. Initially, 2248 articles were retrieved, with 46 included in the final review. Published models demonstrated strong standalone performance and were typically as accurate, or more accurate, than radiologists or non-radiologist clinicians. Multiple studies demonstrated an improvement in the clinical finding classification performance of clinicians when models acted as a diagnostic assistance device. Device performance was compared with that of clinicians in 30% of studies, while effects on clinical perception and diagnosis were evaluated in 19%. Only one study was prospectively run. On average, 128,662 images were used to train and validate models. Most classified less than eight clinical findings, while the three most comprehensive models classified 54, 72, and 124 findings. This review suggests that machine learning devices designed to facilitate CXR interpretation perform strongly, improve the detection performance of clinicians, and improve the efficiency of radiology workflow. Several limitations were identified, and clinician involvement and expertise will be key to driving the safe implementation of quality CXR machine learning systems.
引用
收藏
页数:31
相关论文
共 115 条
[1]   COVID-Net CXR-S: Deep Convolutional Neural Network for Severity Assessment of COVID-19 Cases from Chest X-ray Images [J].
Aboutalebi, Hossein ;
Pavlova, Maya ;
Shafiee, Mohammad Javad ;
Sabri, Ali ;
Alaref, Amer ;
Wong, Alexander .
DIAGNOSTICS, 2022, 12 (01)
[2]   Association of Artificial Intelligence-Aided Chest Radiograph Interpretation With Reader Performance and Efficiency [J].
Ahn, Jong Seok ;
Ebrahimian, Shadi ;
McDermott, Shaunagh ;
Lee, Sanghyup ;
Naccarato, Laura ;
Di Capua, John F. ;
Wu, Markus Y. ;
Zhang, Eric W. ;
Muse, Victorine ;
Miller, Benjamin ;
Sabzalipour, Farid ;
Bizzo, Bernardo C. ;
Dreyer, Keith J. ;
Kaviani, Parisa ;
Digumarthy, Subba R. ;
Kalra, Mannudeep K. .
JAMA NETWORK OPEN, 2022, 5 (08) :E2229289
[3]   Fast and Accurate Detection of COVID-19 Along With 14 Other Chest Pathologies Using a Multi-Level Classification: Algorithm Development and Validation Study [J].
Albahli, Saleh ;
Yar, Ghulam Nabi Ahmad Hassan .
JOURNAL OF MEDICAL INTERNET RESEARCH, 2021, 23 (02)
[4]   A novel augmented deep transfer learning for classification of COVID-19 and other thoracic diseases from X-rays [J].
Altaf, Fouzia ;
Islam, Syed M. S. ;
Janjua, Naeem Khalid .
NEURAL COMPUTING & APPLICATIONS, 2021, 33 (20) :14037-14048
[5]   Smart chest X-ray worklist prioritization using artificial intelligence: a clinical workflow simulation [J].
Baltruschat, Ivo ;
Steinmeister, Leonhard ;
Nickisch, Hannes ;
Saalbach, Axel ;
Grass, Michael ;
Adam, Gerhard ;
Knopp, Tobias ;
Ittrich, Harald .
EUROPEAN RADIOLOGY, 2021, 31 (06) :3837-3845
[6]   The impact of machine learning on patient care: A systematic review [J].
Ben-Israel, David ;
Jacobs, W. Bradley ;
Casha, Steve ;
Lang, Stefan ;
Ryu, Won Hyung A. ;
de Lotbiniere-Bassett, Madeleine ;
Cadotte, David W. .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2020, 103 (103)
[7]  
Bharati Subrato, 2020, Inform Med Unlocked, V20, P100391, DOI 10.1016/j.imu.2020.100391
[8]   Error and discrepancy in radiology: inevitable or avoidable? [J].
Brady, Adrian P. .
INSIGHTS INTO IMAGING, 2017, 8 (01) :171-182
[9]   Charting the potential of brain computed tomography deep learning systems [J].
Buchlak, Quinlan D. ;
Milne, Michael R. ;
Seah, Jarrel ;
Johnson, Andrew ;
Samarasinghe, Gihan ;
Hachey, Ben ;
Esmaili, Nazanin ;
Tran, Aengus ;
Leveque, Jean-Christophe ;
Farrokhi, Farrokh ;
Goldschlager, Tony ;
Edelstein, Simon ;
Brotchie, Peter .
JOURNAL OF CLINICAL NEUROSCIENCE, 2022, 99 :217-223
[10]   Machine learning applications to neuroimaging for glioma detection and classification: An artificial intelligence augmented systematic review [J].
Buchlak, Quinlan D. ;
Esmaili, Nazanin ;
Leveque, Jean-Christophe ;
Bennett, Christine ;
Farrokhi, Farrokh ;
Piccardi, Massimo .
JOURNAL OF CLINICAL NEUROSCIENCE, 2021, 89 :177-198