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Main Authors: Aalizadeh, Majid, Raut, Chinmay, Tabartehfarahani, Ali, Fan, Xudong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.03398
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author Aalizadeh, Majid
Raut, Chinmay
Tabartehfarahani, Ali
Fan, Xudong
author_facet Aalizadeh, Majid
Raut, Chinmay
Tabartehfarahani, Ali
Fan, Xudong
contents Conventional colorimetric sensing methods typically rely on signal intensity at a single wavelength, often selected heuristically based on peak visual modulation. This approach overlooks the structured information embedded in full-spectrum transmission profiles, particularly in intensity-based systems where linear models may be highly effective. In this study, we experimentally demonstrate that applying a forward feature selection strategy to normalized transmission spectra, combined with linear regression and ten-fold cross-validation, yields significant improvements in predictive accuracy. Using food dye dilutions as a model system, the mean squared error was reduced from over 22,000 with a single wavelength to 3.87 using twelve selected features, corresponding to a more than 5,700-fold enhancement. These results validate that full-spectrum modeling enables precise concentration prediction without requiring changes to the sensing hardware. The approach is broadly applicable to colorimetric assays used in medical diagnostics, environmental monitoring, and industrial analysis, offering a scalable pathway to improve sensitivity and reliability in existing platforms.
format Preprint
id arxiv_https___arxiv_org_abs_2509_03398
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-Wavelength Machine Learning for High-Precision Colorimetric Sensing
Aalizadeh, Majid
Raut, Chinmay
Tabartehfarahani, Ali
Fan, Xudong
Medical Physics
Mathematical Physics
Quantitative Methods
Conventional colorimetric sensing methods typically rely on signal intensity at a single wavelength, often selected heuristically based on peak visual modulation. This approach overlooks the structured information embedded in full-spectrum transmission profiles, particularly in intensity-based systems where linear models may be highly effective. In this study, we experimentally demonstrate that applying a forward feature selection strategy to normalized transmission spectra, combined with linear regression and ten-fold cross-validation, yields significant improvements in predictive accuracy. Using food dye dilutions as a model system, the mean squared error was reduced from over 22,000 with a single wavelength to 3.87 using twelve selected features, corresponding to a more than 5,700-fold enhancement. These results validate that full-spectrum modeling enables precise concentration prediction without requiring changes to the sensing hardware. The approach is broadly applicable to colorimetric assays used in medical diagnostics, environmental monitoring, and industrial analysis, offering a scalable pathway to improve sensitivity and reliability in existing platforms.
title Multi-Wavelength Machine Learning for High-Precision Colorimetric Sensing
topic Medical Physics
Mathematical Physics
Quantitative Methods
url https://arxiv.org/abs/2509.03398