基于超声图像和数据的早期异体移植物功能障碍的人工智能辅助诊断。

IF 3.2 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Yaqing Meng, Mingyang Wang, Ningning Niu, Haoyan Zhang, Jinghan Yang, Guoying Zhang, Jing Liu, Ying Tang, Kun Wang
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引用次数: 0

摘要

早期同种异体移植物功能障碍(EAD)显著影响肝移植预后。本研究评估了人工智能(AI)辅助方法在准确诊断EAD和确定其原因方面的有效性。评估准确度的主要指标是受试者工作特征曲线下的面积(AUC)。计算和分析准确率、灵敏度和特异性,以比较AI模型彼此之间以及与放射科医生的性能。EAD的分类遵循Olthoff等人建立的标准。选取2012年12月至2021年6月期间接受肝移植的582例患者。117例患者(平均年龄33.5±26.5岁,男性80例)接受评估。从数据库中提取患者的超声参数、图像和临床信息,训练人工智能模型。由4张超声图像和医学数据构建的超声频谱图融合网络的AUC为0.968 (95%CI: 0.940, 0.991),在所有指标上都优于放射科医生30%。人工智能辅助显著提高了诊断的准确性、敏感性和特异性(P
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence-assisted diagnosis of early allograft dysfunction based on ultrasound image and data.

Early allograft dysfunction (EAD) significantly affects liver transplantation prognosis. This study evaluated the effectiveness of artificial intelligence (AI)-assisted methods in accurately diagnosing EAD and identifying its causes. The primary metric for assessing the accuracy was the area under the receiver operating characteristic curve (AUC). Accuracy, sensitivity, and specificity were calculated and analyzed to compare the performance of the AI models with each other and with radiologists. EAD classification followed the criteria established by Olthoff et al. A total of 582 liver transplant patients who underwent transplantation between December 2012 and June 2021 were selected. Among these, 117 patients (mean age 33.5 ± 26.5 years, 80 men) were evaluated. The ultrasound parameters, images, and clinical information of patients were extracted from the database to train the AI model. The AUC for the ultrasound-spectrogram fusion network constructed from four ultrasound images and medical data was 0.968 (95%CI: 0.940, 0.991), outperforming radiologists by 30% for all metrics. AI assistance significantly improved diagnostic accuracy, sensitivity, and specificity (P < 0.050) for both experienced and less-experienced physicians. EAD lacks efficient diagnosis and causation analysis methods. The integration of AI and ultrasound enhances diagnostic accuracy and causation analysis. By modeling only images and data related to blood flow, the AI model effectively analyzed patients with EAD caused by abnormal blood supply. Our model can assist radiologists in reducing judgment discrepancies, potentially benefitting patients with EAD in underdeveloped regions. Furthermore, it enables targeted treatment for those with abnormal blood supply.

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