Evaluation of a novel ensemble model for preoperative ovarian cancer diagnosis: Clinical factors, O-RADS, and deep learning radiomics

IF 5 2区 医学 Q2 Medicine
Yimin Wu , Lifang Fan , Haixin Shao , Jiale Li , Weiwei Yin , Jing Yin , Weiyu Zhu , Pingyang Zhang , Chaoxue Zhang , Junli Wang
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引用次数: 0

Abstract

Background

Accurate early diagnosis of ovarian cancer is crucial. The objective of this research is to create a comprehensive model that merges clinical variables, O-RADS, and deep learning radiomics to support preoperative diagnosis and assess its efficacy for sonographers.

Materials and methods

Data from two centers were used: Center 1 for training and internal validation, and Center 2 for external validation. DL and radiomics features were extracted from transvaginal ultrasound images to create a DL radiomics model using the LASSO method. A machine learning model ensemble was created by merging clinical variables, O-RADS scores, and DL radiomics model predictions. The model's effectiveness was evaluated by measuring the area under the receiver operating characteristic curve (AUC) and analyzing its impact on improving the diagnostic skills of sonographers. Moreover, the model's additional usefulness was assessed through integrated discrimination improvement (IDI), net reclassification improvement (NRI), and subgroup analysis.

Results

The ensemble model demonstrated superior diagnostic performance for ovarian cancer compared to standalone clinical models and clinical O-RADS models. Notably, there were significant improvements in the NRI and IDI across all three datasets, with p-values < 0.05. The ensemble model exhibited exceptional diagnostic performance, achieving AUCs of 0.97 in both the internal and external validation sets. Moreover, the implementation of this ensemble model substantially improved the diagnostic precision and reliability of sonographers. The sonographers' average AUC improved by 11 % in the internal validation set and by 7.7 % in the external validation set.

Conclusions

The ensemble model significantly enhances preoperative ovarian cancer diagnosis accuracy and improves sonographers' diagnostic capabilities and consistency.
评估卵巢癌术前诊断的新型集成模型:临床因素、O-RADS和深度学习放射组学
卵巢癌的早期准确诊断至关重要。本研究的目的是创建一个综合模型,将临床变量、O-RADS和深度学习放射组学结合起来,以支持术前诊断并评估其对超声医师的疗效。材料和方法数据来自两个中心:中心1用于培训和内部验证,中心2用于外部验证。从经阴道超声图像中提取DL和放射组学特征,使用LASSO方法创建DL放射组学模型。通过合并临床变量、O-RADS评分和DL放射组学模型预测,创建了一个机器学习模型集合。通过测量受者工作特征曲线下面积(AUC)来评估该模型的有效性,并分析其对提高超声医师诊断技能的影响。此外,通过综合判别改进(IDI)、净重分类改进(NRI)和亚组分析来评估模型的额外有用性。结果与独立临床模型和临床O-RADS模型相比,集合模型对卵巢癌的诊断效果更好。值得注意的是,在所有三个数据集中,NRI和IDI都有显著改善,p值<;0.05. 集成模型表现出优异的诊断性能,在内部和外部验证集中均达到0.97的auc。此外,该集成模型的实现大大提高了超声医师的诊断精度和可靠性。超声医师的平均AUC在内部验证集中提高了11%,在外部验证集中提高了7.7%。结论集合模型显著提高了术前卵巢癌的诊断准确率,提高了超声医师的诊断能力和一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
8.40
自引率
2.00%
发文量
314
审稿时长
54 days
期刊介绍: Translational Oncology publishes the results of novel research investigations which bridge the laboratory and clinical settings including risk assessment, cellular and molecular characterization, prevention, detection, diagnosis and treatment of human cancers with the overall goal of improving the clinical care of oncology patients. Translational Oncology will publish laboratory studies of novel therapeutic interventions as well as clinical trials which evaluate new treatment paradigms for cancer. Peer reviewed manuscript types include Original Reports, Reviews and Editorials.
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