2021 Annual Meeting
(364a) Analytical Methods to Improve Diagnostic Protocols Using Infrared Spectroscopic Imaging
Authors
In this study, we carry out multivariate analysis of variance (MANOVA) to estimate the discrimination potential of IR spectroscopic features for building accurate machine learning models to separate different diagnostic categories. Next, we build a control point registration-based automated annotation tool that can generate training data for building new models with large-scale validation. The user can precisely annotate coordinates (three points) in the IR image and the clinical image, corresponding to the same spatial architecture using a graphical user interface. This overcomes the limitations of sparse ground truth data with current manual approaches by providing a tool to transfer pathologist annotations from stained images to IR images across diagnostic categories. Spectral features for disease classification are typically selected using feature selection approaches and subsequently used in artificial intelligence (AI) algorithms for diagnosis. Deep learning offers a new approach to combine spatial-spectral features with automatic identification by the AI algorithm. However, deep learning approaches require an extensive database of labeled training data. This would significantly reduce the amount of time needed to generate labeled training data, paving the way for an accurate, fully automated deep learning-based spectroscopic analysis of histopathological samples. We also utilize simple machine learning models to further increase the accuracy of our registration tool. Finally, we develop a combinatorial data mining approach (supervised + unsupervised) to identify diagnostic patterns and selecting pure chemical pixels for each cell type.
References
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