Utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis
Rapid and accurate chemical analysis is desirable in many scientific and technological fields but remains challenging. This thesis demonstrates the integration of domain knowledge-driven feature engineering and machine learning (ML) with UV-vis and SERS spectroscopic analyses for high-throughput...
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sg-ntu-dr.10356-1822302025-02-05T01:58:52Z Utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis Tan, Emily Xi Ling Xing Yi School of Chemistry, Chemical Engineering and Biotechnology XYLing@ntu.edu.sg Chemistry Machine learning Surface enhanced raman scattering Plasmonics Nanomaterial synthesis Rapid and accurate chemical analysis is desirable in many scientific and technological fields but remains challenging. This thesis demonstrates the integration of domain knowledge-driven feature engineering and machine learning (ML) with UV-vis and SERS spectroscopic analyses for high-throughput characterization of both nanomaterials and biochemicals. Traditional electron microscopy for SERS-active nanoparticles is slow and tedious while existing SERS methods often rely on static spectral matching that only identifies known molecules and struggles with unknown chemical mixtures. To address these challenges, this work introduces a twin-pillar strategy: using ML and UV-vis spectroscopy for rapid nanocharacterization and applying ML-driven SERS to detect unknown biochemicals. Chapter 2 introduces a ML-based UV-vis method for characterizing gold nanospheres, achieving high accuracy over the widest size range through the use of basis spline regression. Chapter 3 extends this approach to more complex nanoshapes, such as nanocubes in mixtures, using feature engineering for unprecedented size, purity, and shape predictions from multiplex extinction spectra with low error rates. Chapter 4 presents a hierarchical ML framework for SERS that identifies and quantifies unknown cerebrosides at various concentrations. This signifies a paradigm shift from passive spectral analysis to active identification of unknown molecules. Chapter 5 develops a transfer learning framework achieving precise SERS identification and quantification of unknown carnitine mixtures. Finally, we discuss the prospects of ML-driven spectroscopic analysis to harness high-dimensional multimodal data and identify new and “unseen” analytes amid various interferences. Doctor of Philosophy 2025-01-16T01:14:13Z 2025-01-16T01:14:13Z 2024 Thesis-Doctor of Philosophy Tan, E. X. (2024). Utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/182230 https://hdl.handle.net/10356/182230 10.32657/10356/182230 en This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0). application/pdf Nanyang Technological University |
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Chemistry Machine learning Surface enhanced raman scattering Plasmonics Nanomaterial synthesis Tan, Emily Xi Utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis |
description |
Rapid and accurate chemical analysis is desirable in many scientific and technological fields
but remains challenging. This thesis demonstrates the integration of domain knowledge-driven
feature engineering and machine learning (ML) with UV-vis and SERS spectroscopic analyses
for high-throughput characterization of both nanomaterials and biochemicals. Traditional
electron microscopy for SERS-active nanoparticles is slow and tedious while existing SERS
methods often rely on static spectral matching that only identifies known molecules and
struggles with unknown chemical mixtures. To address these challenges, this work introduces
a twin-pillar strategy: using ML and UV-vis spectroscopy for rapid nanocharacterization and
applying ML-driven SERS to detect unknown biochemicals. Chapter 2 introduces a ML-based
UV-vis method for characterizing gold nanospheres, achieving high accuracy over the widest
size range through the use of basis spline regression. Chapter 3 extends this approach to more
complex nanoshapes, such as nanocubes in mixtures, using feature engineering for
unprecedented size, purity, and shape predictions from multiplex extinction spectra with low
error rates. Chapter 4 presents a hierarchical ML framework for SERS that identifies and
quantifies unknown cerebrosides at various concentrations. This signifies a paradigm shift from
passive spectral analysis to active identification of unknown molecules. Chapter 5 develops a
transfer learning framework achieving precise SERS identification and quantification of
unknown carnitine mixtures. Finally, we discuss the prospects of ML-driven spectroscopic
analysis to harness high-dimensional multimodal data and identify new and “unseen” analytes
amid various interferences. |
author2 |
Ling Xing Yi |
author_facet |
Ling Xing Yi Tan, Emily Xi |
format |
Thesis-Doctor of Philosophy |
author |
Tan, Emily Xi |
author_sort |
Tan, Emily Xi |
title |
Utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis |
title_short |
Utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis |
title_full |
Utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis |
title_fullStr |
Utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis |
title_full_unstemmed |
Utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis |
title_sort |
utilizing chemical domain knowledge and machine learning for nanoparticle and biochemical spectroscopic analysis |
publisher |
Nanyang Technological University |
publishDate |
2025 |
url |
https://hdl.handle.net/10356/182230 |
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1823807350306242560 |