利用风险因素筛查卵巢癌:机器学习辅助。

IF 2.9 4区 医学 Q3 ENGINEERING, BIOMEDICAL BioMedical Engineering OnLine Pub Date : 2024-02-12 DOI:10.1186/s12938-024-01219-x
Raoof Nopour
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引用次数: 0

摘要

背景和目的:卵巢癌(OC)是一种普遍存在的侵袭性恶性肿瘤,对公共卫生构成重大挑战。缺乏卵巢癌预防策略会增加发病率、死亡率和其他负面影响。通过风险预测来筛查卵巢癌是一种有效的预防策略,但目前尚未引起人们的重视。因此,本研究旨在利用机器学习方法作为预测辅助解决方案,筛查 OC 的高危人群,实现实际的预防目的:由于本研究具有数据驱动和回顾性的特点,我们利用了 2015 年至 2019 年期间隶属于萨里市六个临床机构的一个集中数据库中的 1516 名可疑 OC 妇女数据。利用六种机器学习(ML)算法,包括 XG-Boost、随机森林(RF)、J-48、支持向量机(SVM)、K-近邻(KNN)和人工神经网络(ANN),构建 OC 预测模型。为了选择预测 OC 的最佳模型,我们比较了使用接收者特征运算曲线下面积(AU-ROC)建立的各种预测模型:目前的实验结果显示,AU-ROC = 0.93(0.95 CI = [0.91-0.95])的 XG-Boost 被认为是预测 OC 的最佳模型:ML 方法具有显著的预测效率和互操作性,可利用 OC 筛查高危人群实现强大的预防策略。
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Screening ovarian cancer by using risk factors: machine learning assists.

Background and aim: Ovarian cancer (OC) is a prevalent and aggressive malignancy that poses a significant public health challenge. The lack of preventive strategies for OC increases morbidity, mortality, and other negative consequences. Screening OC through risk prediction could be leveraged as a powerful strategy for preventive purposes that have not received much attention. So, this study aimed to leverage machine learning approaches as predictive assistance solutions to screen high-risk groups of OC and achieve practical preventive purposes.

Materials and methods: As this study is data-driven and retrospective in nature, we leveraged 1516 suspicious OC women data from one concentrated database belonging to six clinical settings in Sari City from 2015 to 2019. Six machine learning (ML) algorithms, including XG-Boost, Random Forest (RF), J-48, support vector machine (SVM), K-nearest neighbor (KNN), and artificial neural network (ANN) were leveraged to construct prediction models for OC. To choose the best model for predicting OC, we compared various prediction models built using the area under the receiver characteristic operator curve (AU-ROC).

Results: Current experimental results revealed that the XG-Boost with AU-ROC = 0.93 (0.95 CI = [0.91-0.95]) was recognized as the best-performing model for predicting OC.

Conclusions: ML approaches possess significant predictive efficiency and interoperability to achieve powerful preventive strategies leveraging OC screening high-risk groups.

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来源期刊
BioMedical Engineering OnLine
BioMedical Engineering OnLine 工程技术-工程:生物医学
CiteScore
6.70
自引率
2.60%
发文量
79
审稿时长
1 months
期刊介绍: BioMedical Engineering OnLine is an open access, peer-reviewed journal that is dedicated to publishing research in all areas of biomedical engineering. BioMedical Engineering OnLine is aimed at readers and authors throughout the world, with an interest in using tools of the physical and data sciences and techniques in engineering to understand and solve problems in the biological and medical sciences. Topical areas include, but are not limited to: Bioinformatics- Bioinstrumentation- Biomechanics- Biomedical Devices & Instrumentation- Biomedical Signal Processing- Healthcare Information Systems- Human Dynamics- Neural Engineering- Rehabilitation Engineering- Biomaterials- Biomedical Imaging & Image Processing- BioMEMS and On-Chip Devices- Bio-Micro/Nano Technologies- Biomolecular Engineering- Biosensors- Cardiovascular Systems Engineering- Cellular Engineering- Clinical Engineering- Computational Biology- Drug Delivery Technologies- Modeling Methodologies- Nanomaterials and Nanotechnology in Biomedicine- Respiratory Systems Engineering- Robotics in Medicine- Systems and Synthetic Biology- Systems Biology- Telemedicine/Smartphone Applications in Medicine- Therapeutic Systems, Devices and Technologies- Tissue Engineering
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