# Compensation for Matrix Effects in High-Dimensional Spectral Data Using Standard Addition

**Authors:** Elena Khanonkin, Israel Schechter, Itai Dattner

PMC · DOI: 10.3390/s25030612 · 2025-01-21

## TL;DR

This paper introduces a new algorithm to correct for matrix effects in complex spectral data without needing prior knowledge of the matrix or blank measurements.

## Contribution

A novel standard addition algorithm for high-dimensional spectral data that does not require matrix composition knowledge or blank measurements.

## Key findings

- The algorithm accurately determines analyte concentrations in complex matrices like seawater or food.
- It outperforms existing standard addition and multivariate chemometric methods.
- The method is robust to variations in signal-to-noise ratio and matrix effect intensity.

## Abstract

The standard addition method is widely used in analytical chemistry to compensate for matrix effects. While effective with single signals (e.g., absorbance at a single wavelength) and independent of matrix composition or blank measurements, it has limitations with high-dimensional data (e.g., full spectra). Existing methods for high-dimensional data require knowledge of the matrix composition and blank measurements, restricting their applicability. We propose a novel algorithm for standard addition that works with high-dimensional data without requiring matrix composition knowledge or blank measurements. By modifying experimental data (e.g., spectra) before applying chemometric models, the algorithm accurately determines analyte concentrations even in complex matrices like seawater or food, where blanks are unavailable. A performance evaluation shows the algorithm compensates effectively for matrix effects, outperforms previously published standard addition algorithms and direct applications of multivariate chemometric algorithms, and is robust to variations in SNR and matrix effect intensity.

## Full-text entities

- **Diseases:** injury to people or property (MESH:C000719191)
- **Chemicals:** oils (MESH:D009821)

## Figures

7 figures with captions in the complete paper: https://tomesphere.com/paper/PMC11819934/full.md

---
Source: https://tomesphere.com/paper/PMC11819934