AI-driven multimodal colorimetric analytics for biomedical and behavioral health diagnostics

Comput Struct Biotechnol J. 2025 May 28:27:2219-2232. doi: 10.1016/j.csbj.2025.05.015. eCollection 2025.

Abstract

The exponential growth of multi-scale biomedical and behavioral data introduces both challenges and opportunities for Image 1-driven analytics. Effectively managing the complexity and variability of these data sources requires advanced computational techniques for accurate interpretation and robust decision-making. Integrating Image 2 with colorimetric biosensing and multimodal data fusion offers scalable solutions that can improve diagnostic accuracy, enable early disease detection, and support personalized medicine. This work explores mobile-based colorimetry, an Image 3-driven approach that uses image processing and Image 4 to detect colorimetric changes in chemical and biological solutions. We propose a modular conceptual framework that integrates mobile-based colorimetry with multimodal biomedical data, such as clinical, imaging, and environmental datasets, to develop scalable, low-cost tools for predictive modeling, real-time health monitoring, and personalized diagnostics. We review recent advancements in Image 5-enabled colorimetric analysis and multimodal data fusion for healthcare applications, emphasizing innovations in Image 6-assisted biosensors, Image 7-driven biomedical imaging, and multimodal fusion techniques. In addition, we highlight the need for robust data management systems and interpretable AI/ML models to ensure security, privacy, and reliability in biomedical and behavioral research. This work also highlights practical directions for improving diagnostic accuracy and accessibility, particularly in resource-limited settings.

Keywords: AI model; Biomedical; Colorimetric; Multimodal.

Publication types

  • Review