应用可解释深关键点测量技术评价经导管或手术治疗房间隔缺损的疗效。

Research (Washington, D.C.) Pub Date : 2022-10-21 eCollection Date: 2022-01-01 DOI:10.34133/2022/9790653
Jing Wang, Wanqing Xie, Mingmei Cheng, Qun Wu, Fangyun Wang, Pei Li, Bo Fan, Xin Zhang, Binbin Wang, Xiaofeng Liu
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引用次数: 1

摘要

人工智能(AI)的自动超声心动图解释有可能促进初级临床医生对心脏缺陷的系列诊断。然而,用于建议治疗方案的全自动和可解释的分析管道在很大程度上尚未得到充分开发。本研究旨在建立一个基于深度学习(DL)的经胸超声心动图(TTE)评估房间隔缺损(ASD)的自动、可解释的辅助工具。提出了一种新的深度关键点运动测量(DKS)模型,该模型学习精确定位关键点,即缺陷端点,然后用比例尺进行绝对距离测量。经导管闭合ASD封堵器的闭合计划和大小是根据明确的临床决策规则确定的。回顾性收集两组579例患者的3474张2D和多普勒TTE。DKS的闭包分类准确率(0.9425±0.0052)优于“黑箱”模型(0.7646±0.0068);P < 0.0001)进行中心内评价。在交叉中心情况下或使用二次加权kappa作为评价指标的结果是一致的。细粒度的关键点标签为网络训练提供了更明确的监督。虽然DKS可以完全自动化,但临床医生也可以在过程的不同步骤进行干预和编辑。我们的深度学习关键点定位可以为尺寸敏感型先天性心脏缺陷的评估提供一种自动透明的方法,在中国基层医疗机构具有巨大的潜在应用价值。此外,未来可能会探索更多对尺寸敏感的治疗计划任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Assessment of Transcatheter or Surgical Closure of Atrial Septal Defect using Interpretable Deep Keypoint Stadiometry.

Assessment of Transcatheter or Surgical Closure of Atrial Septal Defect using Interpretable Deep Keypoint Stadiometry.

Assessment of Transcatheter or Surgical Closure of Atrial Septal Defect using Interpretable Deep Keypoint Stadiometry.

Assessment of Transcatheter or Surgical Closure of Atrial Septal Defect using Interpretable Deep Keypoint Stadiometry.

Automated echocardiogram interpretation with artificial intelligence (AI) has the potential to facilitate the serial diagnosis of heart defects by primary clinician. However, the fully automated and interpretable analysis pipeline for suggesting a treatment plan is largely underexplored. The present study targets to build an automatic and interpretable assistant for the transthoracic echocardiogram- (TTE-) based assessment of atrial septal defect (ASD) with deep learning (DL). We developed a novel deep keypoint stadiometry (DKS) model, which learns to precisely localize the keypoints, i.e., the endpoints of defects and followed by the absolute distance measurement with the scale. The closure plan and the size of the ASD occluder for transcatheter closure are derived based on the explicit clinical decision rules. A total of 3,474 2D and Doppler TTE from 579 patients were retrospectively collected from two clinical groups. The accuracy of closure classification using DKS (0.9425 ± 0.0052) outperforms the "black-box" model (0.7646 ± 0.0068; p < 0.0001) for within-center evaluation. The results in cross-center cases or using the quadratic weighted kappa as an evaluation metric are consistent. The fine-grained keypoint label provides more explicit supervision for network training. While DKS can be fully automated, clinicians can intervene and edit at different steps of the process as well. Our deep learning keypoint localization can provide an automatic and transparent way for assessing size-sensitive congenital heart defects, which has huge potential value for application in primary medical institutions in China. Also, more size-sensitive treatment planning tasks may be explored in the future.

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