Personalized approach to malignant struma ovarii: Insights from a web-based machine learning tool.

IF 2.6 3区 医学 Q2 OBSTETRICS & GYNECOLOGY
Sakhr Alshwayyat, Dina Essam Abo-Elnour, Tala Yaser Dabash, Tala Abdulsalam Alshwayyat, Marah Alabbasi, Mustafa Alshwayyat, Kinda Akram Irsheidat
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引用次数: 0

Abstract

Objectives: Malignant struma ovarii (MSO) is a rare ovarian tumor characterized by mature thyroid tissue. The diverse symptoms and uncommon nature of MSO can create difficulties in its diagnosis and treatment. This study aimed to analyze data and use machine learning methods to understand the prognostic factors and potential management strategies for MSO.

Methods: In this retrospective cohort, the Surveillance, Epidemiology, and End Results (SEER) database provided the data used for this study's analysis. To identify the prognostic variables, we conducted Cox regression analysis and constructed prognostic models using five machine learning algorithms to predict the 5-year survival. A validation method incorporating the area under the curve of the receiver operating characteristic curve was used to validate the accuracy and reliability of the machine learning models. We also investigated the role of multiple therapeutic options using the Kaplan-Meier survival analysis.

Results: The study population comprised 329 patients. Multivariate Cox regression analysis revealed that older age, unmarried status, chemotherapy, and the total number of tumors in patients were poor prognostic factors. Machine learning models revealed that the multilayer perceptron accurately predicted outcomes, followed by the random forest classifier, gradient boosting classifier, K-nearest neighbors, and logistic regression models. The factors that contributed the most were age, marital status, and the total number of tumors in the patients.

Conclusion: The present study offers a comprehensive approach for the treatment and prognosis assessment of patients with MSO. The machine learning models we have developed serve as a practical, personalized tool to aid in clinical decision-making processes.

卵巢恶性肿瘤的个性化治疗方法:基于网络的机器学习工具带来的启示。
目的:恶性卵巢肿(MSO)是一种以成熟甲状腺组织为特征的罕见卵巢肿瘤。MSO症状多样且不常见,给诊断和治疗带来困难。本研究旨在分析数据并使用机器学习方法来了解 MSO 的预后因素和潜在的管理策略:在这项回顾性队列研究中,监测、流行病学和最终结果(SEER)数据库提供了用于本研究分析的数据。为了确定预后变量,我们进行了 Cox 回归分析,并使用五种机器学习算法构建了预后模型,以预测 5 年生存率。我们采用了一种结合接收者操作特征曲线下面积的验证方法来验证机器学习模型的准确性和可靠性。我们还使用卡普兰-梅耶生存分析法研究了多种治疗方案的作用:研究对象包括 329 名患者。多变量 Cox 回归分析显示,年龄较大、未婚、化疗和肿瘤总数是不良预后因素。机器学习模型显示,多层感知器能准确预测预后,其次是随机森林分类器、梯度提升分类器、K-近邻和逻辑回归模型。对预测结果贡献最大的因素是患者的年龄、婚姻状况和肿瘤总数:本研究为 MSO 患者的治疗和预后评估提供了一种综合方法。我们开发的机器学习模型是一种实用的个性化工具,有助于临床决策过程。
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
5.80
自引率
2.60%
发文量
493
审稿时长
3-6 weeks
期刊介绍: The International Journal of Gynecology & Obstetrics publishes articles on all aspects of basic and clinical research in the fields of obstetrics and gynecology and related subjects, with emphasis on matters of worldwide interest.
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