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Development of a practical spatial-spectral analysis protocol for breast histopathology using Fourier transform infrared spectroscopic imaging

机译:使用傅立叶变换红外光谱成像技术开发实用的乳腺组织病理学空间光谱分析协议

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Breast cancer screening provides sensitive tumor identification, but low specificity implies that a vast majority of biopsies are not ultimately diagnosed as cancer. Automated techniques to evaluate biopsies can prevent errors, reduce pathologist workload and provide objective analysis. Fourier transform infrared (FT-IR) spectroscopic imaging provides both molecular signatures and spatial information that may be applicable for pathology. Here, we utilize both the spectral and spatial information to develop a combined classifier that provides rapid tissue assessment. First, we evaluated the potential of IR imaging to provide a diagnosis using spectral data alone. While highly accurate histologic [epithelium, stroma] recognition could be achieved, the same was not possible for disease [cancer, no-cancer] due to the diversity of spectral signals. Hence, we employed spatial data, developing and evaluating increasingly complex models, to detect cancers. Sub-mm tumors could be very confidently predicted as indicated by the quantitative measurement of accuracy via receiver operating characteristic (ROC) curve analyses. The developed protocol was validated with a small set and statistical performance used to develop a model that predicts study design for a large scale, definitive validation. The results of evaluation on different instruments, at higher noise levels, under a coarser spectral resolution and two sampling modes [transmission and transflection], indicate that the protocol is highly accurate under a variety of conditions. The study paves the way to validating IR imaging for rapid breast tumor detection, its statistical validation and potential directions for optimization of the speed and sampling for clinical deployment.
机译:乳腺癌筛查可提供敏感的肿瘤识别,但特异性低意味着绝大多数活检标本并未最终诊断为癌症。评估活检的自动化技术可以防止错误,减少病理学家的工作量并提供客观的分析。傅里叶变换红外(FT-IR)光谱成像可提供分子标记和可应用于病理学的空间信息。在这里,我们利用光谱和空间信息来开发可提供快速组织评估的组合分类器。首先,我们评估了仅使用光谱数据进行红外成像诊断的潜力。尽管可以实现高度准确的组织学[上皮细胞,基质]识别,但由于光谱信号的多样性,对于疾病[癌症,无癌症]是不可能的。因此,我们利用空间数据来开发和评估日益复杂的模型,以检测癌症。可以通过接受者工作特征(ROC)曲线分析对准确性进行定量测量,从而可以非常自信地预测亚毫米肿瘤。所开发的方案经过一小组验证,统计性能可用于开发可预测大规模确定性研究设计的模型。在较高的噪声级别,较粗糙的光谱分辨率和两种采样模式(传输和半透)下,对不同仪器进行评估的结果表明,该协议在各种条件下都非常准确。这项研究为验证IR成像以快速进行乳腺肿瘤检测,其统计验证以及优化临床部署的速度和采样的潜在方向铺平了道路。

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