The Sidney Kimmel Comprehensive Cancer Center at Johns Hopkins University, Department of Oncology, 1650 Orleans Avenue, Baltimore, MD 21287, USA.
Cancer Res. 2012 Dec 1;72(23):6097-101. doi: 10.1158/0008-5472.CAN-12-3232. Epub 2012 Nov 19.
Less than 1% of published cancer biomarkers actually enter clinical practice. Although best practices for biomarker development are published, optimistic investigators may not appreciate the statistical near-certainty and diverse modes by which the other 99% (likely including your favorite new marker) do indeed fail. Here, patterns of failure were abstracted for classification from publications and an online database detailing marker failures. Failure patterns formed a hierarchical logical structure, or outline, of an emerging, deeply complex, and arguably fascinating science of biomarker failure. A new cancer biomarker under development is likely to have already encountered one or more of the following fatal features encountered by prior markers: lack of clinical significance, hidden structure in the source data, a technically inadequate assay, inappropriate statistical methods, unmanageable domination of the data by normal variation, implausibility, deficiencies in the studied population or in the investigator system, and its disproof or abandonment for cause by others. A greater recognition of the science of biomarker failure and its near-complete ubiquity is constructive and celebrates a seemingly perpetual richness of biologic, technical, and philosophical complexity, the full appreciation of which could improve the management of scarce research resources.
发表的癌症生物标志物中,实际进入临床实践的不到 1%。尽管已经发表了生物标志物开发的最佳实践,但乐观的研究人员可能没有意识到统计学上的近乎确定性,以及其他 99%(可能包括您最喜欢的新标志物)确实失败的各种模式。在这里,从出版物和详细描述标志物失败的在线数据库中提取失败模式进行分类。失败模式形成了一个新兴的、极其复杂且可以说是引人入胜的生物标志物失败科学的分层逻辑结构或大纲。正在开发的新型癌症生物标志物很可能已经遇到了先前标志物遇到的一种或多种以下致命特征:缺乏临床意义、源数据中的隐藏结构、技术上不充分的检测、不适当的统计方法、正常变异性对数据的不可控主导、不合理、研究人群或研究人员系统中的缺陷,以及其他原因导致的证明或放弃。更深入地认识生物标志物失败的科学及其近乎无处不在的普遍性是建设性的,它庆祝了生物学、技术和哲学复杂性的丰富性,充分认识这一点可以提高对稀缺研究资源的管理。