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首页> 外文期刊>Analytical Letters >Identification of Colorectal Cancer Using Near-Infrared Spectroscopy and Adaboost with Decision Stump
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Identification of Colorectal Cancer Using Near-Infrared Spectroscopy and Adaboost with Decision Stump

机译:用近红外光谱和Demady Stump使用近红外光谱和Adaboost鉴定结直肠癌

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摘要

Rapid and objective detection of cancer is crucial for successful treatment. Near-infrared (NIR) spectroscopy is a vibrational technique capable of optically probing molecular changes associated with disease. The purpose of this study was to explore NIR spectroscopy for discriminating cancer from normal colorectal tissues. A total of 110 tissue samples from patients who underwent operations were characterized in this study. The popular ensemble technique AdaBoost was used to construct the diagnostic model. A decision stump was used as the weak learning algorithm. Adaboost with decision stump, an ensemble of weak classifiers, was compared with the most suitable single model, a strong classifier. Only the 20 most significant variables were selected as inputs for the model based on measured defined variable importance. Using an independent test set, the single strong classifier provided diagnostic accuracy of 89.1%, sensitivity of 100%, and specificity of 78.6%, whereas the ensemble of weak stumps provided accuracy of 96.3%, sensitivity of 96.3%, and specificity of 96.3% for distinguishing cancer from normal colorectal tissues. Therefore, NIR spectroscopy in combination with AdaBoost with decision stumps has demonstrated potential for rapid and objective diagnosis of colorectal cancer.
机译:癌症的快速和客观检测对于成功治疗至关重要。近红外(NIR)光谱是一种能够光学探测与疾病相关的分子变化的振动技术。本研究的目的是探索来自正常结肠组织的判断癌症的NIR光谱。本研究表征了从经过作战的患者中共有110种组织样本。流行的集合技术Adaboost用于构建诊断模型。决策树桩被用作弱学习算法。与决策树桩,弱分类器的集合,与最合适的单一模型,强大的分类器进行了比较。基于测量定义的变量重要性,仅选择20个最重要的变量作为模型的输入。使用独立的测试组,单个强分类器提供诊断准确性为89.1%,灵敏度为100%,特异性为78.6%,而弱树桩的集合提供了96.3%,灵敏度为96.3%,且特异性为96.3%用于区分癌症与正常结肠组织。因此,与决策树桩结合adaboost的NIR光谱表明了结直肠癌的快速和客观诊断的潜力。

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