Local Modeling by Adapting Source Calibration Models to Analyte Shifted Target Domain Samples Without Reference Values.

IF 2.2 3区 化学 Q2 INSTRUMENTS & INSTRUMENTATION
Applied Spectroscopy Pub Date : 2024-09-01 Epub Date: 2024-06-05 DOI:10.1177/00037028241241557
Jordan M J Peper, John H Kalivas
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引用次数: 0

Abstract

Spectral multivariate calibration aims to derive models characterizing mathematical relationships between sample analyte amounts and corresponding spectral responses. These models are effective at predicting target domain sample analyte amounts when target samples are within the analyte and spectral calibration source domain. Models fail when target samples shift (analyte amounts and/or spectra) from the original calibration domain model. A total recalibration solution requires acquisition of new sample reference values and spectra. However, obtaining enough reference values to distinguish the target domain may be challenging or expensive. A simpler approach adapts the original model to the target domain using target sample spectra without analyte reference values (unlabeled). Analytical chemists have developed several machine learning algorithms using unlabeled regression domain adaptation processes. Unfortunately, prediction accuracy declines for these methods depending on how much the target domain analyte distribution has shifted from the calibration distribution, and regression transfer learning methods are instead needed. Regression domain adaptation and transfer learning are often referred to as model updating in analytical chemistry, but regression domain adaptation only applies to spectral shifts. The regression transfer learning method presented in this paper named null augmentation regression constant analyte (NARCA) leverages unlabeled repeat spectra of a single target sample to update an original calibration model to the shifted target domain sample. With sample repeat spectra, the analyte amount can be assumed constant or nearly constant for NARCA and because models are formed for one sample, NARCA operates as a local modeling method. The performance of NARCA as a regression transfer learning method is evaluated using five near-infrared data sets.

通过调整源校准模型以适应无参考值的分析物偏移目标域样本来进行局部建模。
光谱多变量校准旨在推导出描述样品分析物含量与相应光谱响应之间数学关系的模型。当目标样品在分析和光谱校准源域内时,这些模型能有效预测目标域样品分析量。当目标样品偏离原始校准域模型(分析物量和/或光谱)时,模型就会失效。整体重新校准解决方案需要获取新的样本参考值和光谱。然而,获取足够的参考值来区分目标域可能具有挑战性或成本高昂。一种更简单的方法是使用不含分析物参考值(未标记)的目标样品光谱,将原始模型调整到目标域。分析化学家已经开发出几种使用无标记回归域适应过程的机器学习算法。遗憾的是,这些方法的预测准确度会随着目标域分析物分布与校准分布的偏离程度而下降,因此需要回归转移学习方法。回归域适应和迁移学习通常被称为分析化学中的模型更新,但回归域适应只适用于光谱偏移。本文介绍的回归转移学习方法名为 "空增强回归恒定分析物(NARCA)",它利用单个目标样品的未标记重复光谱,将原始校准模型更新为转移目标域样品。有了样品重复光谱,NARCA 就可以假定分析物量恒定或接近恒定,由于模型是针对一个样品建立的,因此 NARCA 是一种局部建模方法。我们使用五个近红外数据集评估了 NARCA 作为回归转移学习方法的性能。
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来源期刊
Applied Spectroscopy
Applied Spectroscopy 工程技术-光谱学
CiteScore
6.60
自引率
5.70%
发文量
139
审稿时长
3.5 months
期刊介绍: Applied Spectroscopy is one of the world''s leading spectroscopy journals, publishing high-quality peer-reviewed articles, both fundamental and applied, covering all aspects of spectroscopy. Established in 1951, the journal is owned by the Society for Applied Spectroscopy and is published monthly. The journal is dedicated to fulfilling the mission of the Society to “…advance and disseminate knowledge and information concerning the art and science of spectroscopy and other allied sciences.”
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