...
首页> 外文期刊>Frontiers in Immunology >Identifying the Presence of Prostate Cancer in Individuals with PSA Levels &20?ng ml ?1 Using Computational Data Extraction Analysis of High Dimensional Peripheral Blood Flow Cytometric Phenotyping Data
【24h】

Identifying the Presence of Prostate Cancer in Individuals with PSA Levels &20?ng ml ?1 Using Computational Data Extraction Analysis of High Dimensional Peripheral Blood Flow Cytometric Phenotyping Data

机译:使用高维外周血流细胞计数表型分析数据的计算数据分析识别PSA水平<20?ng ml ?1 的个体中是否存在前列腺癌

获取原文
           

摘要

Determining whether an asymptomatic individual with Prostate-Specific Antigen (PSA) levels below 20?ng ml~(?1)has prostate cancer in the absence of definitive, biopsy-based evidence continues to present a significant challenge to clinicians who must decide whether such individuals with low PSA values have prostate cancer. Herein, we present an advanced computational data extraction approach which can identify the presence of prostate cancer in men with PSA levels <20 ng ml~(?1)on the basis of peripheral blood immune cell profiles that have been generated using multi-parameter flow cytometry. Statistical analysis of immune phenotyping datasets relating to the presence and prevalence of key leukocyte populations in the peripheral blood, as generated from individuals undergoing routine tests for prostate cancer (including tissue biopsy) using multi-parametric flow cytometric analysis, was unable to identify significant relationships between leukocyte population profiles and the presence of benign disease (no prostate cancer) or prostate cancer. By contrast, a Genetic Algorithm computational approach identified a subset of five flow cytometry features ( CD 8~(+) CD 45 RA ~(?) CD 27~(?) CD 28~(?)( CD 8~(+)Effector Memory cells); CD 4~(+) CD 45 RA ~(?) CD 27~(?) CD 28~(?)( CD 4~(+)Terminally Differentiated Effector Memory Cells re-expressing CD45RA); CD 3~(?) CD 19~(+)(B cells); CD 3~(+) CD 56~(+) CD 8~(+) CD 4~(+)(NKT cells)) from a set of twenty features, which could potentially discriminate between benign disease and prostate cancer. These features were used to construct a prostate cancer prediction model using the k-Nearest-Neighbor classification algorithm. The proposed model, which takes as input the set of flow cytometry features, outperformed the predictive model which takes PSA values as input. Specifically, the flow cytometry-based model achieved Accuracy?=?83.33%, AUC?=?83.40%, and optimal ROC points of FPR?=?16.13%, TPR?=?82.93%, whereas the PSA-based model achieved Accuracy?=?77.78%, AUC?=?76.95%, and optimal ROC points of FPR?=?29.03%, TPR?=?82.93%. Combining PSA and flow cytometry predictors achieved Accuracy?=?79.17%, AUC?=?78.17% and optimal ROC points of FPR?=?29.03%, TPR?=?85.37%. The results demonstrate the value of computational intelligence-based approaches for interrogating immunophenotyping datasets and that combining peripheral blood phenotypic profiling with PSA levels improves diagnostic accuracy compared to using PSA test alone. These studies also demonstrate that the presence of cancer is reflected in changes in the peripheral blood immune phenotype profile which can be identified using computational analysis and interpretation of complex flow cytometry datasets.
机译:在缺乏明确的,基于活检的证据的情况下,确定前列腺特异性抗原(PSA)水平低于20?ng ml〜(?1)的无症状个体是否患有前列腺癌,仍然对临床医生提出了严峻的挑战,临床医生必须确定是否PSA值低的人患有前列腺癌。本文中,我们提出了一种先进的计算数据提取方法,该方法可以根据使用多参数流生成的外周血免疫细胞谱来识别PSA水平<20 ng ml〜(?1)的男性中是否存在前列腺癌。细胞计数。使用多参数流式细胞术分析从进行前列腺癌常规检查(包括组织活检)的个体产生的与外周血中关键白细胞群的存在和流行有关的免疫表型数据集的统计分析无法识别出显着的关系之间的白细胞人口概况和良性疾病(无前列腺癌)或前列腺癌的存在。相比之下,遗传算法计算方法确定了五个流式细胞仪特征的子集(CD 8〜(+)CD 45 RA〜(?)CD 27〜(?)CD 28〜(?)(CD 8〜(+)Effector记忆细胞); CD 4〜(+)CD 45 RA〜(?)CD 27〜(?)CD 28〜(?)(CD 4〜(+)末端分化的效应记忆细胞重新表达CD45RA); CD 3〜 (?)CD 19〜(+)(B细胞); CD 3〜(+)CD 56〜(+)CD 8〜(+)CD 4〜(+)(NKT细胞))这可能会区分良性疾病和前列腺癌。这些特征用于使用k最近邻分类算法构建前列腺癌预测模型。拟议的模型以流式细胞仪特征集为输入,优于以PSA值作为输入的预测模型。具体地,基于流式细胞术的模型达到了准确度≥83.33%,AUC≥83.40%,最佳ROC点为FPR≥16.13%,TPR≥82.93%,而基于PSA的模型获得了准确度。 α= 77.78%,AUC = 76.95%,FPR的最佳ROC点= 29.03%,TPR = 82.93%。将PSA和流式细胞仪结合使用,可达到准确度== 79.17%,AUC = 78.17%,最佳FRC的ROC点= 29.03%,TPR = 85.37%。结果表明,基于计算智能的方法可用于询问免疫表型数据集,与仅使用PSA测试相比,将外周血表型分析与PSA水平结合起来可提高诊断准确性。这些研究还表明,癌症的存在反映在外周血免疫表型谱的变化中,这可以通过计算分析和复杂流式细胞术数据集的解释来确定。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号