Department of Neurosurgery, Graduate School of Biomedical and Health Sciences, Hiroshima University, 1-2-3 Kasumi, Minami-ku, Hiroshima, Hiroshima, 734-8551, Japan.
Department of Neurosurgery, Shimane Prefectural Central Hospital, 4-1-1 Himebara, Izumo, Shimane, 693-8555, Japan.
Sci Rep. 2023 Sep 27;13(1):16202. doi: 10.1038/s41598-023-43418-x.
Diagnostic image analysis for unruptured cerebral aneurysms using artificial intelligence has a very high sensitivity. However, further improvement is needed because of a relatively high number of false positives. This study aimed to confirm the clinical utility of tuning an artificial intelligence algorithm for cerebral aneurysm diagnosis. We extracted 10,000 magnetic resonance imaging scans of participants who underwent brain screening using the "Brain Dock" system. The sensitivity and false positives/case for aneurysm detection were compared before and after tuning the algorithm. The initial diagnosis included only cases for which feedback to the algorithm was provided. In the primary analysis, the sensitivity of aneurysm diagnosis decreased from 96.5 to 90% and the false positives/case improved from 2.06 to 0.99 after tuning the algorithm (P < 0.001). In the secondary analysis, the sensitivity of aneurysm diagnosis decreased from 98.8 to 94.6% and the false positives/case improved from 1.99 to 1.03 after tuning the algorithm (P < 0.001). The false positives/case reduced without a significant decrease in sensitivity. Using large clinical datasets, we demonstrated that by tuning the algorithm, we could significantly reduce false positives with a minimal decline in sensitivity.
使用人工智能对未破裂脑动脉瘤进行诊断性影像分析具有很高的灵敏度。然而,由于假阳性率相对较高,因此需要进一步提高。本研究旨在确认调整人工智能算法进行脑动脉瘤诊断的临床实用性。我们从使用“Brain Dock”系统进行脑部筛查的参与者中提取了 10000 份磁共振成像扫描。在调整算法前后,比较了动脉瘤检测的灵敏度和假阳性/病例数。初始诊断仅包括向算法提供反馈的病例。在主要分析中,调整算法后,动脉瘤诊断的灵敏度从 96.5%降至 90%,假阳性/病例数从 2.06降至 0.99(P<0.001)。在次要分析中,调整算法后,动脉瘤诊断的灵敏度从 98.8%降至 94.6%,假阳性/病例数从 1.99降至 1.03(P<0.001)。假阳性率降低而灵敏度无明显下降。使用大型临床数据集,我们证明通过调整算法,我们可以在灵敏度轻微下降的情况下,显著降低假阳性率。