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Development of the Self Optimising Kohonen Index Network (SKiNET) for Raman Spectroscopy Based Detection of Anatomical Eye Tissue

机译:基于拉曼光谱的解剖眼组织检测的自我优化Kohonen指数网络(SKiNET)的开发

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摘要

Raman spectroscopy shows promise as a tool for timely diagnostics via in-vivo spectroscopy of the eye, for a number of ophthalmic diseases. By measuring the inelastic scattering of light, Raman spectroscopy is able to reveal detailed chemical characteristics, but is an inherently weak effect resulting in noisy complex signal, which is often difficult to analyse. Here, we embraced that noise to develop the self-optimising Kohonen index network (SKiNET), and provide a generic framework for multivariate analysis that simultaneously provides dimensionality reduction, feature extraction and multi-class classification as part of a seamless interface. The method was tested by classification of anatomical ex-vivo eye tissue segments from porcine eyes, yielding an accuracy >93% across 5 tissue types. Unlike traditional packages, the method performs data analysis directly in the web browser through modern web and cloud technologies as an open source extendable web app. The unprecedented accuracy and clarity of the SKiNET methodology has the potential to revolutionise the use of Raman spectroscopy for in-vivo applications.
机译:拉曼光谱法显示出作为通过眼内活体光谱及时诊断多种眼科疾病的工具的希望。通过测量光的非弹性散射,拉曼光谱能够揭示详细的化学特征,但固有的弱效应是产生嘈杂的复杂信号,这通常很难分析。在这里,我们拥抱了这种噪音,以开发自我优化的Kohonen索引网络(SKiNET),并提供了用于多变量分析的通用框架,该框架同时提供了降维,特征提取和多类分类作为无缝接口的一部分。该方法通过对猪眼的解剖离体眼组织片段进行分类来测试,在5种组织类型中产生的准确度> 93%。与传统程序包不同,该方法通过作为开放源代码可扩展Web应用程序的现代Web和云技术直接在Web浏览器中执行数据分析。 SKiNET方法的前所未有的准确性和清晰度可能会改变拉曼光谱在体内应用中的应用。

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