Hoi Koo Young, Lee Sang-Seob, Cheong Harin, Yoo Byeongcheol, Jeon Joohwan
Department of Forensic Medicine, College of Medicine, The Catholic University of Korea, 222, Banpo-daero, Seocho-gu, Seoul, 06591, Republic of Korea.
Department of Anatomy, Catholic Institute of Applied Anatomy, College of Medicine, The Catholic University of Korea, Seoul, Republic of Korea.
Forensic Sci Med Pathol. 2025 Jul 21. doi: 10.1007/s12024-025-01045-0.
A diagnosis of atherosclerotic cardiovascular disease is critical importance in forensic medicine, particularly because severe atherosclerosis is known to be associated with a high risk of sudden death. In South Korea, the assessment of coronary atherosclerosis during autopsy largely depends on the forensic pathologist's visual measurements, which may limit diagnostic accuracy. The objective of this study was to develop a deep learning algorithm for rapid and precise assessment of coronary atherosclerosis and to identify factors influencing the model's prediction of atherosclerosis severity. A total of 3,717 digital photographs were retrospectively extracted from a database of 1,920 forensic autopsies, with one image each selected for the left anterior descending coronary artery and the right coronary artery. The deep learning algorithm developed in this study demonstrated a high level of agreement (0.988, 95% CI: 0.985-0.990) and absolute agreement (0.986, 95% CI: 0.978-0.991) between predicted and ground truth atherosclerosis values on the test set. The model demonstrated strong overall performance on the test set, achieving a weighted F1-score of 0.904. However, the class-wise F1-scores were 0.957 for mild, 0.785 for moderate, and 0.876 for severe grades, indicating that performance was lowest for the moderate grade. Additionally, decomposition, stent implantation, and thrombi did not have a statistically significant impact on coronary atherosclerosis assessment except for calcification. Although enhancing model performance for moderate grades remains a challenge, this study's findings demonstrate the potential of artificial intelligence as a practical tool for assessing coronary atherosclerosis in autopsy photographs.
动脉粥样硬化性心血管疾病的诊断在法医学中至关重要,特别是因为已知严重的动脉粥样硬化与猝死风险高相关。在韩国,尸检期间冠状动脉粥样硬化的评估很大程度上取决于法医病理学家的视觉测量,这可能会限制诊断准确性。本研究的目的是开发一种深度学习算法,用于快速、精确地评估冠状动脉粥样硬化,并确定影响模型对动脉粥样硬化严重程度预测的因素。总共从1920例法医尸检数据库中回顾性提取了3717张数码照片,为左前降支冠状动脉和右冠状动脉各选择一张图像。本研究开发的深度学习算法在测试集上预测的和实际的动脉粥样硬化值之间显示出高度一致性(0.988,95%CI:0.985 - 0.990)和绝对一致性(0.986,95%CI:0.978 - 0.991)。该模型在测试集上表现出强大的整体性能,加权F1分数达到0.904。然而,轻度、中度和重度等级的类别F1分数分别为0.957、0.785和0.876,表明中度等级的性能最低。此外,除钙化外,分解、支架植入和血栓对冠状动脉粥样硬化评估没有统计学上的显著影响。尽管提高中度等级的模型性能仍然是一个挑战,但本研究的结果证明了人工智能作为评估尸检照片中冠状动脉粥样硬化的实用工具的潜力。