Leveraging Deep Learning Decision-Support System in Specialized Oncology Center: A Multi-Reader Retrospective Study on Detection of Pulmonary Lesions in Chest X-ray Images

Author:

Kvak Daniel1ORCID,Chromcová Anna1,Hrubý Robert12ORCID,Janů Eva3ORCID,Biroš Marek14ORCID,Pajdaković Marija15,Kvaková Karolína1,Al-antari Mugahed A.6ORCID,Polášková Pavlína7,Strukov Sergei8

Affiliation:

1. Carebot, Ltd., 128 00 Prague, Czech Republic

2. Faculty of Nuclear Sciences and Physical Engineering, Czech Technical University, 115 19 Prague, Czech Republic

3. Department of Radiology, Masaryk Memorial Cancer Institute, 602 00 Brno, Czech Republic

4. Faculty of Mathematics and Physics, Charles University, 121 16 Prague, Czech Republic

5. Faculty of Electrical Engineering, Czech Technical University, 166 36 Prague, Czech Republic

6. Department of Artificial Intelligence, Daeyang AI Center, Sejong University, Seoul 050 06, Republic of Korea

7. Department of Imaging Methods, Motol University Hospital, 150 06 Prague, Czech Republic

8. Department of Radiodiagnosis, Podripska City Hospital, 413 01 Roudnice nad Labem, Czech Republic

Abstract

Chest X-ray (CXR) is considered to be the most widely used modality for detecting and monitoring various thoracic findings, including lung carcinoma and other pulmonary lesions. However, X-ray imaging shows particular limitations when detecting primary and secondary tumors and is prone to reading errors due to limited resolution and disagreement between radiologists. To address these issues, we developed a deep-learning-based automatic detection algorithm (DLAD) to automatically detect and localize suspicious lesions on CXRs. Five radiologists were invited to retrospectively evaluate 300 CXR images from a specialized oncology center, and the performance of individual radiologists was subsequently compared with that of DLAD. The proposed DLAD achieved significantly higher sensitivity (0.910 (0.854–0.966)) than that of all assessed radiologists (RAD 10.290 (0.201–0.379), p < 0.001, RAD 20.450 (0.352–0.548), p < 0.001, RAD 30.670 (0.578–0.762), p < 0.001, RAD 40.810 (0.733–0.887), p = 0.025, RAD 50.700 (0.610–0.790), p < 0.001). The DLAD specificity (0.775 (0.717–0.833)) was significantly lower than for all assessed radiologists (RAD 11.000 (0.984–1.000), p < 0.001, RAD 20.970 (0.946–1.000), p < 0.001, RAD 30.980 (0.961–1.000), p < 0.001, RAD 40.975 (0.953–0.997), p < 0.001, RAD 50.995 (0.985–1.000), p < 0.001). The study results demonstrate that the proposed DLAD could be utilized as a decision-support system to reduce radiologists’ false negative rate.

Funder

Carebot, Ltd

Publisher

MDPI AG

Subject

Clinical Biochemistry

Reference38 articles.

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