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Receiver-operating Characteristic Curve Analysis In Diagnostic, Prognostic And Predictive Biomarker Research

机译:诊断,预后和预测性生物标志物研究中的受试者工作特征曲线分析

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摘要

From a clinical perspective, biomarkers may have a variety of functions, which correspond to different stages (table 1) in disease development, such as in the progression in cancer or cardiovascular disease. Biomarkers can assist in the care of patients who are asymptomatic (screening biomarkers), those who are suspected to have the disease (diagnostic biomarkers) and those with overt disease (prognostic biomarkers) for whom therapy may or may not have been initiated. Biomarkers can also be used for treatment response (predictive biomarkers) or surveillance after therapy (monitoring biomarkers). Fundamental for the use of biomarkers in all situations is biomarker accuracy-the ability to correctly classify one condition and/or outcome from another (eg, healthy versus diseased). For the clinician, diagnostic testing plays a fundamental role in clinical practice. For instance, daily surgical decision making is based on the correct classification by pathology, radiology and/or clinical chemistry reports involving tissue and/or image evaluation and interpretation of disease conditions-in many decisions the interpretation is based on results in the "grey-area" although requiring "black-and-white" answers for choice of treatment (fig 1). Further, predictive modelling to estimate expected outcomes such as mortality or adverse events based on patient risk characteristics is common in any type of clinical research. Receiver-operating characteristic (ROC) curve analysis is a useful tool in assessment of biomarker accuracy in the two situations-acknowledging strengths and weaknesses of the method.
机译:从临床角度来看,生物标志物可能具有多种功能,这些功能对应于疾病发展中不同阶段(表1),例如癌症或心血管疾病的进展。生物标志物可以帮助无症状的患者(筛查生物标志物),疑似患有疾病的患者(诊断性生物标志物)和明显疾病的患者(预后性生物标志物)进行治疗,也可以不进行治疗。生物标志物还可用于治疗反应(预测性生物标志物)或治疗后监测(监测生物标志物)。在所有情况下使用生物标志物的根本要素是生物标志物的准确性-正确分类一种疾病和/或另一疾病(例如,健康与疾病)的结果的能力。对于临床医生而言,诊断测试在临床实践中起着至关重要的作用。例如,日常手术决策是基于病理,放射学和/或临床化学报告的正确分类,涉及组织和/或图像评估以及对疾病状况的解释-在许多决策中,解释都是基于“灰色-区域”,但在选择治疗方法时需要“黑白”答案(图1)。此外,在任何类型的临床研究中,基于患者风险特征来估计预期结果(例如死亡率或不良事件)的预测模型都很常见。接收者操作特征(ROC)曲线分析是评估两种情况下生物标志物准确性的有用工具,该方法认识到该方法的优缺点。

著录项

  • 来源
    《Journal of Clinical Pathology》 |2009年第1期|p.1-5|共5页
  • 作者

    Kjetil Soreide;

  • 作者单位

    Department of Surgery, Stavanger University Hospital, H U Box 8100, Armauer Hansens vei 20, N-4068 Stavanger, Norway;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 病理学;
  • 关键词

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