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Spectral classifier design with ensemble classifiers and misclassification-rejection: application to elastic-scattering spectroscopy for detection of colonic neoplasia

机译:具有整体分类器和误分类拒绝的光谱分类器设计:在弹性散射光谱学中用于结肠癌的检测

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摘要

Optical spectroscopy has shown potential as a real-time, in vivo, diagnostic tool for identifying neoplasia during endoscopy. We present the development of a diagnostic algorithm to classify elastic-scattering spectroscopy (ESS) spectra as either neoplastic or non-neoplastic. The algorithm is based on pattern recognition methods, including ensemble classifiers, in which members of the ensemble are trained on different regions of the ESS spectrum, and misclassification-rejection, where the algorithm identifies and refrains from classifying samples that are at higher risk of being misclassified. These “rejected” samples can be reexamined by simply repositioning the probe to obtain additional optical readings or ultimately by sending the polyp for histopathological assessment, as per standard practice. Prospective validation using separate training and testing sets result in a baseline performance of sensitivity = .83, specificity = .79, using the standard framework of feature extraction (principal component analysis) followed by classification (with linear support vector machines). With the developed algorithm, performance improves to Se ∼ 0.90, Sp ∼ 0.90, at a cost of rejecting 20–33% of the samples. These results are on par with a panel of expert pathologists. For colonoscopic prevention of colorectal cancer, our system could reduce biopsy risk and cost, obviate retrieval of non-neoplastic polyps, decrease procedure time, and improve assessment of cancer risk.
机译:光谱法已显示出潜力,可作为一种实时的体内诊断工具,可在内窥镜检查过程中识别肿瘤。我们目前提出一种诊断算法,以将弹性散射光谱(ESS)光谱分类为赘生性或非赘生性。该算法基于模式识别方法,包括集合分类器,其中在ESS频谱的不同区域训练集合的成员,以及错误分类-拒绝,算法在其中识别和拒绝分类具有较高风险的样本分类错误。这些“被剔除”的样本可以通过简单地重新放置探针以获得额外的光学读数,或者最终通过按照常规方法将息肉送去进行组织病理学评估来重新检查。使用标准的特征提取(主要成分分析)框架,然后进行分类(使用线性支持向量机),使用单独的训练和测试集进行前瞻性验证可得出基线性能为灵敏度= .83,特异性= .79。使用改进的算法,性能提高到Se〜0.90,Sp〜0.90,但会损失20-33%的样本。这些结果与专家病理学家小组相当。为了结肠镜预防大肠癌,我们的系统可以降低活检的风险和成本,避免非肿瘤性息肉的恢复,减少手术时间,并改善对癌症风险的评估。

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