An artificial intelligence-based recognition model of colorectal liver metastases in intraoperative ultrasonography with improved accuracy through algorithm integration.

IF 3.2 3区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY
Maho Takayama, Kyoji Ito, Kenji Karako, Yuichiro Mihara, Shu Sasaki, Akihiko Ichida, Takeshi Takamoto, Nobuhisa Akamatsu, Yoshikuni Kawaguchi, Kiyoshi Hasegawa
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引用次数: 0

Abstract

Background/purpose: Contrast-enhanced intraoperative ultrasonography (CE-IOUS) is crucial for detecting colorectal liver metastases (CLM) during surgery. Although artificial intelligence shows potential in diagnostic systems, its application in CE-IOUS is limited.

Methods: This study aimed to develop an automatic tumor detection model using Mask region-based convolutional neural network (Mask R-CNN) for CE-IOUS images. CE-IOUS videos of the CLM from 121 patients were collected, generating ground truth data. A total of 2659 images were obtained. Two models were developed: the basic recognition model (BRM), which was trained on CE-mode images, and the subtraction model (SM), which used images created by a subtraction algorithm that highlighted the differences in pixel values between the basic-mode and CE-mode images. The subtraction algorithm focuses on echogenicity differences. These two models were combined into a combination model (CM), which assessed outcomes using the prediction probabilities from both models.

Results: The optimal epochs were determined by the maximum area under the curve (AUC), and the thresholds were calculated accordingly. BRM, SM, and CM achieved 89.4%, 86.6%, and 96.5% accuracy, respectively. CM outperformed the individual models, achieving an AUC of 0.99.

Conclusions: A novel automated recognition model was developed for accurate CLM detection in CE-IOUS by integrating image- and algorithm-based models.

基于人工智能的术中超声成像结直肠肝转移识别模型,通过算法集成提高了准确性。
背景/目的:对比度增强术中超声成像(CE-IOUS)是手术中检测结直肠肝转移(CLM)的关键。虽然人工智能在诊断系统中显示出了潜力,但其在 CE-IOUS 中的应用还很有限:本研究旨在利用基于掩膜区域的卷积神经网络(Mask R-CNN)为 CE-IOUS 图像开发一种肿瘤自动检测模型。研究收集了 121 名患者的 CLM CE-IOUS 视频,从而生成了基本真实数据。共获得 2659 幅图像。我们开发了两种模型:基本识别模型(BRM)和减法模型(SM),前者是在 CE 模式图像上进行训练,后者则使用减法算法创建的图像,该算法强调基本模式和 CE 模式图像之间像素值的差异。减法算法的重点是回声差异。这两个模型被组合成一个组合模型(CM),利用两个模型的预测概率对结果进行评估:根据曲线下的最大面积(AUC)确定最佳时间,并据此计算阈值。BRM、SM 和 CM 的准确率分别为 89.4%、86.6% 和 96.5%。CM 的表现优于单个模型,其 AUC 达到了 0.99:通过整合基于图像和算法的模型,为在 CE-IOUS 中准确检测 CLM 开发了一种新型自动识别模型。
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来源期刊
Journal of Hepato‐Biliary‐Pancreatic Sciences
Journal of Hepato‐Biliary‐Pancreatic Sciences GASTROENTEROLOGY & HEPATOLOGY-SURGERY
自引率
10.00%
发文量
178
审稿时长
6-12 weeks
期刊介绍: The Journal of Hepato-Biliary-Pancreatic Sciences (JHBPS) is the leading peer-reviewed journal in the field of hepato-biliary-pancreatic sciences. JHBPS publishes articles dealing with clinical research as well as translational research on all aspects of this field. Coverage includes Original Article, Review Article, Images of Interest, Rapid Communication and an announcement section. Letters to the Editor and comments on the journal’s policies or content are also included. JHBPS welcomes submissions from surgeons, physicians, endoscopists, radiologists, oncologists, and pathologists.
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