利用深度学习方法,基于年龄时间尺度对确诊为乳腺癌的妇女进行加速危险预测。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-10-28 DOI:10.1186/s12911-024-02725-7
Zahra Ramezani, Jamshid Yazdani Charati, Reza Alizadeh-Navaei, Mohammad Eslamijouybari
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引用次数: 0

摘要

乳腺癌是女性最常见的癌症。以往的研究已经对乳腺癌的比例危险率和生存率进行了估计和预测。本研究采用深度学习方法,根据乳腺癌患者的年龄类别预测加速危险(AH)率。加速危险率具有时间依赖性结构,其比率随时间和变量影响而变化。我们收集了文华医科大学 1225 名女性乳腺癌患者的相关数据。记录了患者的人口学和临床特征,包括家族史、年龄、吸烟史、子宫切除术、初潮年龄、孕产妇、哺乳次数、疾病分级、婚姻状况和生存状况。首先,我们对三个年龄组的患者进行了预测:≤ 40 岁、41-60 岁和≥ 61 岁。然后,讨论了通过深度学习预测每个乳腺癌患者基于年龄组别的加速风险值,以及使用 LightGBM 预测变量的重要性。改善乳腺癌的临床管理和治疗需要先进的方法,例如随时间变化的 AH 计算。当行为效应被假定为危险函数之间的时间尺度变化时,AH 模型更适合随机临床试验。研究结果表明,根据乳腺癌患者的人口统计学和临床特征,所提出的模型在预测不同年龄段的 AH 方面表现出色。
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Accelerated hazard prediction based on age time-scale for women diagnosed with breast cancer using a deep learning method.

Breast cancer is the most common cancer in women. Previous studies have investigated estimating and predicting the proportional hazard rates and survival in breast cancer. This study deals with predicting accelerated hazards (AH) rate based on age categories in breast cancer patients using deep learning methods. The AH has a time-dependent structure whose rate changes according to time and variable effects. We have collected data related to 1225 female patients with breast cancer at the Mandarin University of Medical Sciences. The patients' demographic and clinical characteristics including family history, age, history of tobacco use, hysterectomy, first menstruation age, gravida, number of breastfeeding, disease grade, marital status, and survival status have been recorded. Initially, we dealt with predicting three age groups of patients: ≤ 40, 41-60, and ≥ 61 years. Then, the prediction of accelerated risk value based on age categories for each breast cancer patient through deep learning and the importance of variables using LightGBM is discussed. Improving clinical management and treatment of breast cancer requires advanced methods such as time-dependent AH calculation. When the behavioral effect is assumed as a time scale change between hazard functions, the AH model is more appropriate for randomized clinical trials. The study results demonstrate the proper performance of the proposed model for predicting AH by age categories based on breast cancer patients' demographic and clinical characteristics.

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4.30%
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567
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