临床资料分析显示胃癌可分为三种亚型

Xinxin Wang, Zhana Duren, Chao Zhang, Lin Chen, Yong Wang
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引用次数: 6

摘要

胃癌是全球第四大常见癌症,也是导致癌症相关死亡的第二大原因。目前大量临床资料的积累,使得临床病理检查能够识别临床因素,揭示其可能的相关性,挖掘胃癌可能的临床模式。本文对2006 ~ 2010年经病理诊断和治疗的1500余例胃癌患者的临床资料进行分析。具体来说,我们通过从临床背景、免疫组化数据和癌症分期信息三大类中提取14个可用的临床因素来收集和预处理数据。然后对这些因素进行量化,计算显著因子及其相关性。重要的是,我们通过他们的临床因素概况相似度来定义两个患者之间的距离,并将所有患者聚类到亚组中。我们发现大多数患者可分为三大类,我们将其定义为胃癌的三种亚型。每个亚型都有其自身的重要因素和相关性来分析和表征。我们的分析可能为胃癌的分类和诊断提供重要的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical data analysis reveals three subytpes of gastric cancer
Gastric cancer is the fourth most common cancer and second leading cause of cancer-related death worldwide. Nowadays the accumulated large scale clinical data allows the clinicopathlogical review to identify the clinical factors, reveal their possible correlations, and mine the possible clinical patterns for gastric cancer. Here we analyze the clinical data of over 1500 gastric cancer patients histopathologically diagnosed and treated during 2006 to 2010. Specifically, we collect and preprocess the data by extracting 14 available clinical factors from three categories, i.e., the clinical background, immunohistochemistry data, and the caner's stage information. Then these factors are quantized and the significant factors and their correlations are calculated. Importantly, we define a distance between two patients by their clinical factors profile similarity and cluster all the patients into subgroups. We find that most of the patients fall into three major classes and we define them as three subtypes of gastric cancer. Each subtype is analyzed and characterized by its own significant factors and correlations. Our analysis may provide important insights for gastric cancer classification and diagnose.
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