Computer-Aided Detection of Pulmonary Nodules in Computed Tomography Using ClearReadCT

被引:0
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作者
Anne-Kathrin Wagner
Arno Hapich
Marios Nikos Psychogios
Ulf Teichgräber
Ansgar Malich
Ismini Papageorgiou
机构
[1] University Hospital Jena,Institute of Diagnostic and Interventional Radiology
[2] Südharz Hospital Nordhausen,Institute of Radiology
[3] Südharz Hospital Nordhausen,Department of Thoracic Surgery
[4] University Medicine Göttingen,Institute of Diagnostic and Interventional Neuroradiology
来源
Journal of Medical Systems | 2019年 / 43卷
关键词
nodule classification; segmentation; vessel suppression; background elimination; lung cancer;
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学科分类号
摘要
This study evaluates the accuracy of a computer-aided detection (CAD) application for pulmonary nodular lesions (PNL) in computed tomography (CT) scans, the ClearReadCT (Riverain Technologies). The study was retrospective for 106 biopsied PNLs from 100 patients. Seventy-five scans were Contrast-Enhanced (CECT) and 25 received no enhancer (NECT). Axial reconstructions in soft-tissue and lung kernel were applied at three different slice thicknesses, 0.75 mm (CECT/NECT n = 25/6), 1.5 mm (n = 18/9) and 3.0 mm (n = 43/18). We questioned the effect of (1) enhancer, (2) kernel and (3) slice thickness on the CAD performance. Our main findings are: (1) Vessel suppression is effective and specific in both NECT and CECT. (2) Contrast enhancement significantly increased the CAD sensitivity from 60% in NECT to 80% in CECT, P = 0.025 Fischer’s exact test. (3) The CAD sensitivity was 84% in 3 mm slices compared to 68% in 0.75 mm slices, P > 0.2 Fischer’s exact test. (4) Small lesions of low attenuation were detected with higher sensitivity. (5) Lung kernel reconstructions increased the false positive rate without affecting the sensitivity (P > 0.05 McNemar’s test). In conclusion, ClearReadCT showed an optimized sensitivity of 84% and a positive predictive value of 67% in enhanced lung scans with thick, soft kernel reconstructions. NECT, thin slices and lung kernel reconstruction were associated with inferior performance.
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