Presentation + Paper
2 March 2022 Application of machine learning algorithms for the classification of organs in premature infants using broadband optical spectroscopy
Ethan Flowerday, Ali Daneshkhah, Vadim Backman, Seth D. Goldstein
Author Affiliations +
Abstract
Spectroscopy allows for the collection of optical data from the skin's underlying organs. Data were collected and analyzed from 26 premature infants using broadband optical spectrometry (BOS) within a 350–2500 nm wavelength range using a handheld probe in contact with the skin. Patients varied in physical characteristics (such as weight and skin tone), and scans were taken across multiple days allowing for different subject physical conditions (such as illness, hydration, feed regimen, etc). Statistical analysis and deep learning were leveraged to provide proof-of-concept that optical data is sufficient to distinguish the abdomen from the thigh, indicating that intestinal tissue can be detected, and potential for ischemic disease prediction in future study. We utilized feature-based modeling using principal component analysis (PCA) that discovered a panel of markers from spectra with high univariate AUC and low feature correlation. Our model proposed five features that distinguish abdomen from thigh with an AUC of 0.89 using unsupervised PCA and an AUC of 0.92 using supervised linear discriminant analysis (LDA). Neural network (NN) modeling of a signal wavelength, a panel of 12 selected wavelengths, and a whole spectrum yielded respective accuracies of 62%, 92%, and 95% for spectra-wise, and 65%, 100%, and 100% for subject-wise classification for the validation data set. For the test data set, accuracies of 68%, 84%, and 85% in spectra-wise and 83%, 92%, and 92% in subject wise analysis were achieved. We conclude that analysis of human tissue spectra is sufficient to permit noninvasive characterization of specific underlying organs.
Conference Presentation
© (2022) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Ethan Flowerday, Ali Daneshkhah, Vadim Backman, and Seth D. Goldstein "Application of machine learning algorithms for the classification of organs in premature infants using broadband optical spectroscopy", Proc. SPIE 11973, Advanced Chemical Microscopy for Life Science and Translational Medicine 2022, 1197303 (2 March 2022); https://doi.org/10.1117/12.2609659
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KEYWORDS
Data modeling

Principal component analysis

Abdomen

Optical spectroscopy

Spectroscopy

Statistical analysis

Feature selection

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