Boichard Amélie, Richard Stephane B, Kurzrock Razelle
Center for Personalized Cancer Therapy, University of California Moores Cancer Center, La Jolla, CA 92093, USA.
CureMatch Inc., San Diego, CA 92121, USA.
Cancers (Basel). 2020 Jan 9;12(1):166. doi: 10.3390/cancers12010166.
Metastatic cancer is a medical challenge that has been historically resistant to treatments. One area of leverage in cancer care is the development of molecularly-driven combination therapies, offering the possibility to overcome resistance. The selection of optimized treatments based on the complex molecular features of a patient's tumor may be rendered easier by using a computer-assisted program. We used the PreciGENE platform that uses multi-pathway molecular analysis to identify personalized therapeutic options. These options are ranked using a predictive score reflecting the degree to which a therapy or combination of therapies matches the patient's biomarker profile. We searched PubMed from February 2010 to June 2017 for all patients described as exceptional responders who also had molecular data available. Altogether, 70 patients with cancer who had received 202 different treatment lines and who had responded (stable disease ≥12 months/partial or complete remission) to ≥1 regimen were curated. We demonstrate that an algorithm reflecting the degree to which patients were matched to the drugs administered correctly ranked the response to the regimens with a sensitivity of 84% and a specificity of 77%. The difference in matching score between successful and unsuccessful treatment lines was significant (median, 65% versus 0%, -value <0.0001).
转移性癌症是一项医学挑战,一直以来对治疗具有抗性。癌症治疗中的一个可利用领域是开发分子驱动的联合疗法,这为克服抗性提供了可能性。通过使用计算机辅助程序,基于患者肿瘤复杂分子特征选择优化治疗可能会变得更容易。我们使用了PreciGENE平台,该平台利用多途径分子分析来确定个性化治疗方案。这些方案通过一个预测分数进行排序,该分数反映了一种疗法或多种疗法组合与患者生物标志物谱的匹配程度。我们在2010年2月至2017年6月期间在PubMed上搜索了所有被描述为特别应答者且有分子数据可用的患者。总共整理了70例癌症患者,他们接受了202种不同的治疗方案,并且对≥1种治疗方案有反应(疾病稳定≥12个月/部分或完全缓解)。我们证明,一种反映患者与所施用药物匹配程度的算法能够正确地对治疗方案的反应进行排序,灵敏度为84%,特异性为77%。成功和不成功治疗方案之间的匹配分数差异显著(中位数,65%对0%,P值<0.0001)。