Development of a portable Raman device with artificial intelligence method for the detection and staging of endometrial cancer

Manu Krishnan Krishnan Nambudiri, A. Rajanbabu, Indu Ramachandran Nair, Anandita, Shantikumar V Nair, Manzoor Koyakutty, Girish Chundayil Madathil
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Abstract

The success of a Raman spectroscopy device in cancer detection lies in its ability to acquire high‐quality Raman signals from samples and to employ efficient classification algorithms in analysing spectral data. Portable Raman systems enabled with artificial intelligence tools are well adaptable to clinical settings and for accuracy for community‐level rapid screening. Here, we developed a robotic Raman device with a high‐efficiency Raman probe, validating it against endometrial cancers detecting high‐grade, low‐grade cancers and normal classes. Algorithms like principal component analysis‐discriminant analysis, and support vector machine were compared against the deep learning methodology; convolutional neural network (CNN) with and without data augmentation. Eventually, the system could classify high‐grade, low‐grade and normal tissues with an F1‐score of 91%, 94% and 97%, respectively. CNN with data augmentation proved to be the most dependable classifier that works well even in the presence of high background noise. Thus, we demonstrate a unique portable Raman device with AI tools for high‐sensitivity Raman analysis of endometrial cancer.
用于子宫内膜癌检测和分期的便携式人工智能拉曼仪的研制
拉曼光谱装置在癌症检测中的成功在于它能够从样品中获取高质量的拉曼信号,并在分析光谱数据时采用有效的分类算法。采用人工智能工具的便携式拉曼系统能够很好地适应临床环境,并能准确地进行社区级快速筛查。在这里,我们开发了一种带有高效拉曼探针的机器人拉曼装置,验证了它对子宫内膜癌检测的有效性,包括检测高级别、低级别和正常级别的癌症。将主成分分析-判别分析和支持向量机等算法与深度学习方法进行了比较;卷积神经网络(CNN)有和没有数据增强。最终,该系统可以区分高分级、低分级和正常组织,F1评分分别为91%、94%和97%。经过数据增强的CNN被证明是最可靠的分类器,即使在高背景噪声的情况下也能很好地工作。因此,我们展示了一种独特的便携式拉曼仪器和人工智能工具,用于子宫内膜癌的高灵敏度拉曼分析。
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