Machine learning application identifies plasma markers for proteinuria in metastatic colorectal cancer patients treated with Bevacizumab.

IF 2.7 4区 医学 Q3 ONCOLOGY
Cancer Chemotherapy and Pharmacology Pub Date : 2024-06-01 Epub Date: 2024-02-25 DOI:10.1007/s00280-024-04655-7
Zhuoyuan Yu, Haifan Xu, Miao Feng, Liqun Chen
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引用次数: 0

Abstract

Background and objectives: Proteinuria is a common complication after the application of bevacizumab therapy in patients with metastatic colorectal cancer, and severe proteinuria can lead to discontinuation of the drug. There is a lack of sophisticated means to predict bevacizumab-induced proteinuria, so the present study aims to predict bevacizumab-induced proteinuria using peripheral venous blood samples.

Methods: A total of 122 subjects were enrolled and underwent pre-treatment plasma markers, and we followed them for six months with proteinuria as the endpoint event. We then analyzed the clinical features and plasma markers for grade ≥ 2 proteinuria occurrence using machine learning to construct a model with predictive utility.

Results: One hundred sixteen subjects were included in the statistical analysis. We found that high baseline systolic blood pressure, low baseline HGF, high baseline ET1, high baseline MMP2, and high baseline ACE1 were risk factors for the development of grade ≥ 2 proteinuria in patients with metastatic colorectal cancer who received bevacizumab. Then, we constructed a support vector machine model with a sensitivity of 0.889, a specificity of 0.918, a precision of 0.615, and an F1 score of 0.727.

Conclusion: We constructed a machine learning model for predicting grade ≥ 2 bevacizumab-induced proteinuria, which may provide proteinuria risk assessment for applying bevacizumab in patients with metastatic colorectal cancer.

Abstract Image

机器学习应用确定了接受贝伐珠单抗治疗的转移性结直肠癌患者蛋白尿的血浆标记物。
背景和目的:蛋白尿是转移性结直肠癌患者应用贝伐珠单抗治疗后常见的并发症,严重的蛋白尿可导致停药。目前尚缺乏成熟的方法预测贝伐珠单抗诱发的蛋白尿,因此本研究旨在利用外周静脉血样本预测贝伐珠单抗诱发的蛋白尿:方法:我们共招募了 122 名受试者,对他们进行了治疗前血浆标志物检测,并以蛋白尿为终点事件对他们进行了为期 6 个月的随访。然后,我们利用机器学习分析了≥2级蛋白尿发生的临床特征和血浆标志物,构建了一个具有预测作用的模型:统计分析共纳入 116 名受试者。我们发现,高基线收缩压、低基线HGF、高基线ET1、高基线MMP2和高基线ACE1是接受贝伐单抗治疗的转移性结直肠癌患者出现≥2级蛋白尿的风险因素。然后,我们构建了一个支持向量机模型,其灵敏度为 0.889,特异性为 0.918,精确度为 0.615,F1 得分为 0.727:我们构建了一个预测贝伐珠单抗诱发蛋白尿≥2级的机器学习模型,该模型可为转移性结直肠癌患者应用贝伐珠单抗提供蛋白尿风险评估。
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来源期刊
CiteScore
6.10
自引率
3.30%
发文量
116
审稿时长
2.5 months
期刊介绍: Addressing a wide range of pharmacologic and oncologic concerns on both experimental and clinical levels, Cancer Chemotherapy and Pharmacology is an eminent journal in the field. The primary focus in this rapid publication medium is on new anticancer agents, their experimental screening, preclinical toxicology and pharmacology, single and combined drug administration modalities, and clinical phase I, II and III trials. It is essential reading for pharmacologists and oncologists giving results recorded in the following areas: clinical toxicology, pharmacokinetics, pharmacodynamics, drug interactions, and indications for chemotherapy in cancer treatment strategy.
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