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用于囊性肾病变恶性风险预测的深度学习系统:一项多中心研究。

Deep learning system for malignancy risk prediction in cystic renal lesions: a multicenter study.

作者信息

He Quan-Hao, Feng Jia-Jun, Wu Ling-Cheng, Wang Yun, Zhang Xuan, Jiang Qing, Zeng Qi-Yuan, Yin Si-Wen, He Wei-Yang, Lv Fa-Jin, Xiao Ming-Zhao

机构信息

Department of Urology, The First Affiliated Hospital of Chongqing Medical University, Chongqing, People's Republic of China.

Department of Medical Imaging, Guangzhou First People's Hospital, School of Medicine, South China University of Technology, Guangzhou, China.

出版信息

Insights Imaging. 2024 May 20;15(1):121. doi: 10.1186/s13244-024-01700-0.

Abstract

OBJECTIVES

To develop an interactive, non-invasive artificial intelligence (AI) system for malignancy risk prediction in cystic renal lesions (CRLs).

METHODS

In this retrospective, multicenter diagnostic study, we evaluated 715 patients. An interactive geodesic-based 3D segmentation model was created for CRLs segmentation. A CRLs classification model was developed using spatial encoder temporal decoder (SETD) architecture. The classification model combines a 3D-ResNet50 network for extracting spatial features and a gated recurrent unit (GRU) network for decoding temporal features from multi-phase CT images. We assessed the segmentation model using sensitivity (SEN), specificity (SPE), intersection over union (IOU), and dice similarity (Dice) metrics. The classification model's performance was evaluated using the area under the receiver operator characteristic curve (AUC), accuracy score (ACC), and decision curve analysis (DCA).

RESULTS

From 2012 to 2023, we included 477 CRLs (median age, 57 [IQR: 48-65]; 173 men) in the training cohort, 226 CRLs (median age, 60 [IQR: 52-69]; 77 men) in the validation cohort, and 239 CRLs (median age, 59 [IQR: 53-69]; 95 men) in the testing cohort (external validation cohort 1, cohort 2, and cohort 3). The segmentation model and SETD classifier exhibited excellent performance in both validation (AUC = 0.973, ACC = 0.916, Dice = 0.847, IOU = 0.743, SEN = 0.840, SPE = 1.000) and testing datasets (AUC = 0.998, ACC = 0.988, Dice = 0.861, IOU = 0.762, SEN = 0.876, SPE = 1.000).

CONCLUSION

The AI system demonstrated excellent benign-malignant discriminatory ability across both validation and testing datasets and illustrated improved clinical decision-making utility.

CRITICAL RELEVANCE STATEMENT

In this era when incidental CRLs are prevalent, this interactive, non-invasive AI system will facilitate accurate diagnosis of CRLs, reducing excessive follow-up and overtreatment.

KEY POINTS

The rising prevalence of CRLs necessitates better malignancy prediction strategies. The AI system demonstrated excellent diagnostic performance in identifying malignant CRL. The AI system illustrated improved clinical decision-making utility.

摘要

目的

开发一种用于囊性肾病变(CRL)恶性风险预测的交互式、非侵入性人工智能(AI)系统。

方法

在这项回顾性多中心诊断研究中,我们评估了715例患者。创建了一个基于交互式测地线的3D分割模型用于CRL分割。使用空间编码器-时间解码器(SETD)架构开发了一个CRL分类模型。该分类模型结合了一个用于提取空间特征的3D-ResNet50网络和一个用于从多期CT图像中解码时间特征的门控循环单元(GRU)网络。我们使用灵敏度(SEN)、特异性(SPE)、交并比(IOU)和骰子相似度(Dice)指标评估分割模型。使用受试者操作特征曲线下面积(AUC)、准确率(ACC)和决策曲线分析(DCA)评估分类模型的性能。

结果

从2012年到2023年,我们在训练队列中纳入了477个CRL(中位年龄,57岁[四分位间距:48 - 65岁];173名男性),在验证队列中纳入了226个CRL(中位年龄,60岁[四分位间距:52 - 69岁];77名男性),在测试队列(外部验证队列1、队列2和队列3)中纳入了239个CRL(中位年龄,59岁[四分位间距:53 - 69岁];95名男性)。分割模型和SETD分类器在验证数据集(AUC = 0.973,ACC = 0.916,Dice = 0.847,IOU = 0.743,SEN = 0.840,SPE = 1.000)和测试数据集(AUC = 0.998,ACC = 0.988,Dice = 0.861,IOU = 0.762,SEN = 0.876,SPE = 1.000)中均表现出优异的性能。

结论

该AI系统在验证和测试数据集中均表现出出色的良恶性鉴别能力,并显示出改善的临床决策效用。

关键相关性声明

在偶然发现CRL普遍存在的这个时代,这种交互式、非侵入性AI系统将有助于CRL的准确诊断,减少过度随访和过度治疗。

要点

CRL患病率的上升需要更好的恶性风险预测策略。该AI系统在识别恶性CRL方面表现出优异的诊断性能。该AI系统显示出改善的临床决策效用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6cbc/11102892/d7aa7566c884/13244_2024_1700_Fig1_HTML.jpg

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