转移学习放射组学图预测晚期胃癌术后复发。

IF 3.7 3区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY
Liebin Huang, Bao Feng, Zhiqi Yang, Shi-Ting Feng, Yu Liu, Huimin Xue, Jiangfeng Shi, Qinxian Chen, Tao Zhou, Xiangguang Chen, Cuixia Wan, Xiaofeng Chen, Wansheng Long
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引用次数: 0

摘要

背景与目的:本研究采用迁移学习(TL)算法预测晚期胃癌(AGC)术后复发,并在小样本临床研究中评估其价值。方法:对来自3个中心的431例AGC进行回顾性研究。首先,基于不同的源域构建TL签名(tls),包括全幻灯片图像(TLS-WSIs)和自然图像(TLS-ImageNet);同时构建基于CT图像的临床模型和非tls模型。其次,将最优TLS与临床因素结合构建TL放射学模型(TLRM)。最后,采用ROC分析对模型的性能进行评价。采用综合判别改善(IDI)和决策曲线分析(DCA)评估模型的临床效用。结果:TLS-WSI明显优于TLS-ImageNet、非tls和临床模型(p)。结论:TLS-WSI可用于预测AGC术后复发,而TLRM更有效。TL可以有效地提高小样本量临床研究模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Transfer Learning Radiomics Nomogram to Predict the Postoperative Recurrence of Advanced Gastric Cancer.

Background and aim: In this study, a transfer learning (TL) algorithm was used to predict postoperative recurrence of advanced gastric cancer (AGC) and to evaluate its value in a small-sample clinical study.

Methods: A total of 431 cases of AGC from three centers were included in this retrospective study. First, TL signatures (TLSs) were constructed based on different source domains, including whole slide images (TLS-WSIs) and natural images (TLS-ImageNet). Clinical model and non-TLS based on CT images were constructed simultaneously. Second, TL radiomic model (TLRM) was constructed by combining optimal TLS and clinical factors. Finally, the performance of the models was evaluated by ROC analysis. The clinical utility of the models was assessed using integrated discriminant improvement (IDI) and decision curve analysis (DCA).

Results: TLS-WSI significantly outperformed TLS-ImageNet, non-TLS, and clinical models (p < 0.05). The AUC value of TLS-WSI in training cohort was 0.9459 (95CI%: 0.9054, 0.9863) and ranged from 0.8050 (95CI%: 0.7130, 0.8969) to 0.8984 (95CI%: 0.8420, 0.9547) in validation cohorts. TLS-WSI and the nodular or irregular outer layer of gastric wall were screened to construct TLRM. The AUC value of TLRM in training cohort was 0.9643 (95CI%: 0.9349, 0.9936) and ranged from 0.8561 (95CI%: 0.7571, 0.9552) to 0.9195 (95CI%: 0.8670, 0.9721) in validation cohorts. The IDI and DCA showed that the performance of TLRM outperformed the other models.

Conclusion: TLS-WSI can be used to predict postoperative recurrence in AGC, whereas TLRM is more effective. TL can effectively improve the performance of clinical research models with a small sample size.

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来源期刊
CiteScore
7.90
自引率
2.40%
发文量
326
审稿时长
2.3 months
期刊介绍: Journal of Gastroenterology and Hepatology is produced 12 times per year and publishes peer-reviewed original papers, reviews and editorials concerned with clinical practice and research in the fields of hepatology, gastroenterology and endoscopy. Papers cover the medical, radiological, pathological, biochemical, physiological and historical aspects of the subject areas. All submitted papers are reviewed by at least two referees expert in the field of the submitted paper.
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