Performance of a deep-learning-based lung nodule detection system using 0.25-mm thick ultra-high-resolution CT images
Haruka Higashibori, Wataru Fukumoto, Sayaka Kusuda, Kazushi Yokomachi, Hidenori Mitani, Yuko Nakamura, Kazuo Awai

TL;DR
This study evaluates how well a deep-learning system detects lung nodules in ultra-high-resolution CT scans with different slice thicknesses.
Contribution
The study evaluates the performance of a commercial deep-learning system on ultra-high-resolution CT images with 0.25-mm slices for lung nodule detection.
Findings
1-mm slices provided the highest sensitivity for lung nodule detection.
0.25-mm slices did not improve detection performance compared to 1-mm slices.
Thinner slices increased false positives but did not enhance overall system performance.
Abstract
Artificial intelligence (AI) algorithms for lung nodule detection assist radiologists. As their performance using ultra-high-resolution CT (U-HRCT) images has not been evaluated, we investigated the usefulness of 0.25-mm slices at U-HRCT using the commercially available deep-learning-based lung nodule detection (DL-LND) system. We enrolled 63 patients who underwent U-HRCT for lung cancer and suspected lung cancer. Two board-certified radiologists identified nodules more than 4 mm in diameter on 1-mm HRCT slices and set the reference standard consensually. They recorded all lesions detected on 5-, 1-, and 0.25-mm slices by the DL-LND system. Unidentified nodules were included in the reference standard. To examine the performance of the DL-LND system, the sensitivity, and positive predictive value (PPV) and the number of false positive (FP) nodules were recorded. The mean number of…
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Taxonomy
TopicsLung Cancer Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging · Advanced X-ray and CT Imaging
