Abraham Jim, Heimberger Amy B, Marshall John, Heath Elisabeth, Drabick Joseph, Helmstetter Anthony, Xiu Joanne, Magee Daniel, Stafford Phillip, Nabhan Chadi, Antani Sourabh, Johnston Curtis, Oberley Matthew, Korn Wolfgang Michael, Spetzler David
Caris Life Sciences, 4610 South 44th Place, Phoenix, AZ 85040, USA; Arizona State University, Phoenix, AZ, USA.
Department of Neurosurgery, The University of Texas MD Anderson Cancer Center, Houston, TX, USA.
Transl Oncol. 2021 Mar;14(3):101016. doi: 10.1016/j.tranon.2021.101016. Epub 2021 Jan 16.
Cancer of Unknown Primary (CUP) occurs in 3-5% of patients when standard histological diagnostic tests are unable to determine the origin of metastatic cancer. Typically, a CUP diagnosis is treated empirically and has very poor outcomes, with median overall survival less than one year. Gene expression profiling alone has been used to identify the tissue of origin but struggles with low neoplastic percentage in metastatic sites which is where identification is often most needed. MI GPSai, a Genomic Prevalence Score, uses DNA sequencing and whole transcriptome data coupled with machine learning to aid in the diagnosis of cancer. The algorithm trained on genomic data from 34,352 cases and genomic and transcriptomic data from 23,137 cases and was validated on 19,555 cases. MI GPSai predicted the tumor type in the labeled data set with an accuracy of over 94% on 93% of cases while deliberating amongst 21 possible categories of cancer. When also considering the second highest prediction, the accuracy increases to 97%. Additionally, MI GPSai rendered a prediction for 71.7% of CUP cases. Pathologist evaluation of discrepancies between submitted diagnosis and MI GPSai predictions resulted in change of diagnosis in 41.3% of the time. MI GPSai provides clinically meaningful information in a large proportion of CUP cases and inclusion of MI GPSai in clinical routine could improve diagnostic fidelity. Moreover, all genomic markers essential for therapy selection are assessed in this assay, maximizing the clinical utility for patients within a single test.
未知原发灶癌(CUP)在3%-5%的患者中出现,此时标准组织学诊断测试无法确定转移性癌症的起源。通常,CUP诊断是经验性治疗,预后很差,总体中位生存期不到一年。仅基因表达谱分析已被用于确定起源组织,但在转移性部位肿瘤比例较低的情况下存在困难,而这些部位往往是最需要进行识别的地方。MI GPSai是一种基因组流行率评分,它使用DNA测序和全转录组数据,并结合机器学习来辅助癌症诊断。该算法基于34352例的基因组数据以及23137例的基因组和转录组数据进行训练,并在19555例病例上进行了验证。MI GPSai在标记数据集中预测肿瘤类型,在93%的病例中准确率超过94%,同时在21种可能的癌症类别中进行判断。如果还考虑第二高的预测结果,准确率会提高到97%。此外,MI GPSai对71.7%的CUP病例做出了预测。病理学家对提交的诊断与MI GPSai预测之间的差异进行评估,结果在41.3%的情况下导致了诊断的改变。MI GPSai在很大一部分CUP病例中提供了具有临床意义的信息,在临床常规中纳入MI GPSai可以提高诊断准确性。此外,该检测评估了治疗选择所需的所有基因组标记,在一次检测中最大限度地提高了对患者的临床实用性。