Abstract

BackgroundArtificial Intelligence (AI) is a promising tool for cardiothoracic ratio (CTR) measurement that has been technically validated but not clinically evaluated on a large dataset. We observed and validated AI and manual methods for CTR measurement using a large dataset and investigated the clinical utility of the AI method.MethodsFive thousand normal chest x-rays and 2,517 images with cardiomegaly and CTR values, were analyzed using manual, AI-assisted, and AI-only methods. AI-only methods obtained CTR values from a VGG-16 U-Net model. An in-house software was used to aid the manual and AI-assisted measurements and to record operating time. Intra and inter-observer experiments were performed on manual and AI-assisted methods and the averages were used in a method variation study. AI outcomes were graded in the AI-assisted method as excellent (accepted by both users independently), good (required adjustment), and poor (failed outcome). Bland–Altman plot with coefficient of variation (CV), and coefficient of determination (R-squared) were used to evaluate agreement and correlation between measurements. Finally, the performance of a cardiomegaly classification test was evaluated using a CTR cutoff at the standard (0.5), optimum, and maximum sensitivity.ResultsManual CTR measurements on cardiomegaly data were comparable to previous radiologist reports (CV of 2.13% vs 2.04%). The observer and method variations from the AI-only method were about three times higher than from the manual method (CV of 5.78% vs 2.13%). AI assistance resulted in 40% excellent, 56% good, and 4% poor grading. AI assistance significantly improved agreement on inter-observer measurement compared to manual methods (CV; bias: 1.72%; − 0.61% vs 2.13%; − 1.62%) and was faster to perform (2.2 ± 2.4 secs vs 10.6 ± 1.5 secs). The R-squared and classification-test were not reliable indicators to verify that the AI-only method could replace manual operation.ConclusionsAI alone is not yet suitable to replace manual operations due to its high variation, but it is useful to assist the radiologist because it can reduce observer variation and operation time. Agreement of measurement should be used to compare AI and manual methods, rather than R-square or classification performance tests.

Highlights

  • Chest radiography (CXR) is the most widely-used modality for screening of lung and heart diseases in clinical practice due to its easy accessibility and costeffectiveness [1]

  • Data were acquired from chest x-ray radiologist reports between 2010–2019 from patients aged over 17 years, and their PA-upright CXR images were retrieved from the Picture Archiving Communication System (PACS) in our radiology department

  • Three examples of the poor outcome are displayed in Fig. 3j–l, which illustrates cardiothoracic ratio (CTR) measurements from the Artificial Intelligence (AI)-assisted method

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Summary

Introduction

Chest radiography (CXR) is the most widely-used modality for screening of lung and heart diseases in clinical practice due to its easy accessibility and costeffectiveness [1]. All DL techniques in CTR calculation are based on the U-Net model, the most successful convolutional network for biomedical image segmentation [13]. While DL techniques in CTR calculation have been technically validated, only two reports [9, 11] with small sample size (n = 100) were conducted in the clinical setting. There is a need to clinically validate this calculation technique with a large dataset before it can be implemented in routine hospital settings. Artificial Intelligence (AI) is a promising tool for cardiothoracic ratio (CTR) measurement that has been technically validated but not clinically evaluated on a large dataset. We observed and validated AI and manual methods for CTR measurement using a large dataset and investigated the clinical utility of the AI method

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