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Covariance weighted distance metrics for optical diagnosis of cancer

机译:用于癌症光学诊断的协方差距离度量

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Classification of normal and various graded cancer tissues requires a robust distance measure to account for the problems of background noise, source separation and outliers which are inherent to elastic scattering spectroscopy data. It must also have the interpretations for the variation in correlations existing in refractive index fluctuations due to inhomogeneity between healthy and different grades of cancerous tissues. In this contribution, we propose the amalgamation of the L distance family and Mahalanobis distance metrics to account for problems mentioned above. The proposed metric for the special case of Manhattan and Chebyshev with Mahalanobis metric has been shown. The efficacy of the proposed distance measure based classification to discriminate the normal and graded cancer tissues with K-NN classifier have been done. Classification accuracy of 93.75%, with sensitivity of 100%, and specificity of 91.94%, validates the suitability of the proposed methodology for pre-cancer detection.
机译:正常和各种分级癌组织的分类需要稳健的距离措施来解释源于弹性散射光谱数据所固有的背景噪声,源分离和异常值的问题。它还必须具有对由于健康和不同等级的癌组织之间的不均匀性存在于折射率波动中存在的相关性的变化的解释。在这一贡献中,我们提出了L距离家族和Mahalanobis距离指标的融合,以解释上述问题。已经显示了曼哈顿特殊情况的拟议度量,以及Mahalanobis指标的特例。已经完成了基于距离测量的分类来区分与K-NN分类器的正常和分级癌组织的疗效。 93.75 %的分类精度,灵敏度为100 %,特异性为91.94 %,验证了癌前检测方法的适用性。

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