Machine Learning Model for Chest Radiographs: Using Local Data to Enhance Performance

Author:

Mohn Sarah F.1ORCID,Law Marco1,Koleva Maria1,Lee Brian2,Berg Adam3,Murray Nicolas34,Nicolaou Savvas34,Parker William A.5

Affiliation:

1. University of British Columbia, Vancouver, BC, Canada

2. Vancouver Coastal Health, Vancouver, BC, Canada

3. Vancouver General Hospital, Vancouver, BC, Canada

4. Department of Radiology, University of British Columbia, Vancouver, BC, Canada

5. Stanford University, Stanford, CA, USA

Abstract

Purpose To develop and assess the performance of a machine learning model which screens chest radiographs for 14 labels, and to determine whether fine-tuning the model on local data improves its performance. Generalizability at different institutions has been an obstacle to machine learning model implementation. We hypothesized that the performance of a model trained on an open-source dataset will improve at our local institution after being fine-tuned on local data. Methods In this retrospective, institutional review board approved study, an ensemble of neural networks was trained on open-source datasets of chest radiographs for the detection of 14 labels. This model was then fine-tuned using 4510 local radiograph studies, using radiologists’ reports as the gold standard to evaluate model performance. Both the open-source and fine-tuned models’ accuracy were tested on 802 local radiographs. Receiver-operator characteristic curves were calculated, and statistical analysis was completed using DeLong’s method and Wilcoxon signed-rank test. Results The fine-tuned model identified 12 of 14 pathology labels with area under the curves greater than .75. After fine-tuning with local data, the model performed statistically significantly better overall, and specifically in detecting six pathology labels ( P < .01). Conclusions A machine learning model able to accurately detect 14 labels simultaneously on chest radiographs was developed using open-source data, and its performance was improved after fine-tuning on local site data. This simple method of fine-tuning existing models on local data could improve the generalizability of existing models across different institutions to further improve their local performance.

Publisher

SAGE Publications

Subject

Radiology, Nuclear Medicine and imaging,General Medicine

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Integration of artificial intelligence in clinical laboratory medicine: Advancements and challenges;Interdisciplinary Medicine;2024-06-14

2. Canadian radiology: 2024 update;Diagnostic and Interventional Imaging;2024-06

3. Editor’s Corner: August 2023;Canadian Association of Radiologists Journal;2023-02-28

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