Issue 58, 2025, Issue in Progress

Interpretable machine learning integrated with TD-DFT descriptors and SHAP analysis for predicting the maximum absorption wavelength of azo dyes

Abstract

The maximum absorption wavelength (λmax) represents a key property determining the application performance of azo dyes, and accurate prediction of λmax is of paramount importance for accelerating the rational design of novel dye molecules. Existing prediction models exhibit significant limitations in terms of prediction accuracy and chemical interpretability. In this work, we propose an innovative prediction framework for λmax of azo dyes by integrating Gaussian Process Regression (GPR) with key molecular descriptors derived from time-dependent density functional theory (TD-DFT) calculations. Results indicate that the coefficient of determination (R2) for leave-one-out cross-validation (LOOCV) was 0.83, and that for the independent test set was 0.74. According to SHAP analysis, the S0 → S1 transition energy exhibits a negative correlation with λmax (maximum absorption wavelength), while the concurrent elevation of HOMO and LUMO energies induces a red-shift in λmax. Notably, the number of sulfur atoms in the R substituent shows a positive correlation with λmax. Furthermore, a high-throughput screening strategy was employed to identify 21 azo molecules with relatively large λmax values from 14 376 virtual samples. The predicted λmax of these identified molecules is expected to undergo a red-shift relative to the baseline maximum λmax of 650 nm in the original dataset. This study presents a straightforward approach for the discovery of azo dyes with extended λmax, providing a practical reference for the targeted design of such functional materials.

Graphical abstract: Interpretable machine learning integrated with TD-DFT descriptors and SHAP analysis for predicting the maximum absorption wavelength of azo dyes

Supplementary files

Article information

Article type
Paper
Submitted
05 Oct 2025
Accepted
09 Dec 2025
First published
15 Dec 2025
This article is Open Access
Creative Commons BY-NC license

RSC Adv., 2025,15, 50065-50075

Interpretable machine learning integrated with TD-DFT descriptors and SHAP analysis for predicting the maximum absorption wavelength of azo dyes

Y. Fang, C. Cao, D. Yin, G. Luo, Y. Cheng and Q. Wang, RSC Adv., 2025, 15, 50065 DOI: 10.1039/D5RA07578E

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