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Analytical Challenges in Development of Chemoresistance Predictors for Precision Oncology

机译:精密肿瘤学中化学抑制预测因子发展的分析挑战

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Chemoresistance, i.e., tumor insensitivity to chemotherapy, shortens life expectancy of cancer patients. Despite the availability of new treatment options, initial systemic regimens for solid tumors are dominated by a set of standard chemotherapy drugs, and alternative therapies are used only when a patient has demonstrated chemoresistance clinically. Chemoresistance predictors use laboratory parameters measured on tissue samples to predict the patient's response to chemotherapy and help to avoid application of chemotherapy to chemoresistant patients. Despite thousands of publications on putative chemoresistance predictors, there are only about a dozen predictors that are sufficiently accurate for precision oncology. One of the major reasons for inaccuracy of predictors is inaccuracy of analytical methods utilized to measure their laboratory parameters: an inaccurate method leads to an inaccurate predictor. The goal of this study was to identify analytical challenges in chemoresistance-predictor development and suggest ways to overcome them. Here we describe principles of chemoresistance predictor development via correlating a clinical parameter, which manifests disease state, with a laboratory parameter. We further classify predictors based on the nature of laboratory parameters and analyze advantages and limitations of different predictors using the reliability of analytical methods utilized for measuring laboratory parameters as a criterion. Our eventual focus is on predictors with known mechanisms of reactions involved in drug resistance (drug extrusion, drug degradation, and DNA damage repair) and using rate constants of these reactions to establish accurate and robust laboratory parameters. Many aspects and conclusions of our analysis are applicable to all types of disease biomarkers built upon the correlation of clinical and laboratory parameters.
机译:化学抑制剂,即肿瘤对化疗的不敏感,缩短癌症患者的预期寿命。尽管提供了新的治疗方案,但实体肿瘤的初始系统性方案是由一组标准化疗药物支配,只有当患者临床上证明Chemiolisiessistance时,才使用替代疗法。 Chemiolisions预测器使用在组织样品上测量的实验室参数,以预测患者对化疗的反应,并有助于避免在化学抑制患者中施加化疗。尽管推定化学抑制剂上有数千张出版物,但只有大约十几个预测因子,可用于精密肿瘤学。预测因子不准确的主要原因之一是用于测量其实验室参数的分析方法的不准确性:不准确的方法导致不准确的预测因子。本研究的目标是识别化学抑制 - 预测原则开发中的分析挑战,并提出了克服它们的方法。在这里,我们通过与实验室参数相关的临床参数来描述化学抑制预测原则的原理。我们进一步根据实验室参数的性质进一步分类预测因子,并利用用于测量实验室参数作为标准的分析方法的可靠性来分析不同预测因子的优缺点。我们的最终重点是具有已知的反应机制的预测因素,涉及耐药性(药物挤出,药物降解和DNA损伤修复),并使用这些反应的速率常数来建立准确和鲁棒的实验室参数。我们分析的许多方面和结论适用于所有类型的疾病生物标志物,基于临床和实验室参数的相关性。

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