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首页> 外文期刊>Biomedical Optics Express >Direct identification of breast cancer pathologies using blind separation of label-free localized reflectance measurements
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Direct identification of breast cancer pathologies using blind separation of label-free localized reflectance measurements

机译:使用无标签局部反射率测量的盲分离直接识别乳腺癌病理

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Breast tumors are blindly identified using Principal (PCA) and Independent Component Analysis (ICA) of localized reflectance measurements. No assumption of a particular theoretical model for the reflectance needs to be made, while the resulting features are proven to have discriminative power of breast pathologies. Normal, benign and malignant breast tissue types in lumpectomy specimens were imaged ex vivo and a surgeon-guided calibration of the system is proposed to overcome the limitations of the blind analysis. A simple, fast and linear classifier has been proposed where no training information is required for the diagnosis. A set of 29 breast tissue specimens have been diagnosed with a sensitivity of 96% and specificity of 95% when discriminating benign from malignant pathologies. The proposed hybrid combination PCA-ICA enhanced diagnostic discrimination, providing tumor probability maps, and intermediate PCA parameters reflected tissue optical properties.
机译:使用主成分(PCA)和独立成分分析(ICA)进行局部反射率测量可盲目识别乳腺肿瘤。无需对反射率采用特定的理论模型进行假设,而事实证明所产生的特征具有乳腺病理学的判别力。乳房切除术标本中正常,良性和恶性的乳腺组织类型在体外成像,并提出了由医生指导的系统校准,以克服盲法分析的局限性。已经提出了一种简单,快速和线性的分类器,其中不需要训练信息来进行诊断。在区分良性和恶性病理时,已诊断出一组29个乳腺组织标本,其敏感性为96%,特异性为95%。拟议的混合组合PCA-ICA增强了诊断能力,提供了肿瘤概率图,中间的PCA参数反映了组织的光学特性。

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