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Suh, Yung Doug
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Machine Learning-Guided Discovery of Copper(I)-Iodide Cluster Scintillators for Efficient X-ray Luminescence Imaging

Author(s)
Wang, YanzeZhang, TinghaoZhao, WenjingXu, WeidongWu, ZhongbinSuh, Yung DougZhang, YuezhouLiu, XiaowangHuang, Wei
Issued Date
2025-01
DOI
10.1002/anie.202413672
URI
https://scholarworks.unist.ac.kr/handle/201301/90557
Fulltext
https://onlinelibrary.wiley.com/doi/10.1002/anie.202413672
Citation
Angewandte Chemie - International Edition, v.64, no.1, pp.e202413672
Abstract
Developing efficient scintillators with environmentally friendly compositions, adaptable band gaps, and robust chemical stability is crucial for modern X-ray radiography. While copper(I)-iodide cluster crystals show promise, the vast design space of inorganic cores and organic ligands poses challenges for conventional approaches. In this study, we present machine learning-guided discovery of copper(I)-iodide cluster scintillators for efficient X-ray luminescence imaging. Our findings reveal that combining base learning models with fused features enhances model generalization, achieving an impressive determination coefficient of 0.88. By leveraging this approach, we obtain a high-performance Cu(I)-I cluster scintillator, named copper iodide-(1-Butyl-1,4-diazabicyclo[2.2.2]octan-1-ium)2, which exhibit radioluminescence 56 times stronger than that of PbWO4, and enables a detection limit for X-rays of 19.6 nGyair s−1. Furthermore, we demonstrate the versatility of these scintillators by incorporating them as microfillers in the fabrication of flexible composite scintillators for X-ray imaging, achieving a static resolution of 20 lp mm−1 and demonstrating promising performance for dynamic X-ray imaging. © 2024 Wiley-VCH GmbH.
Publisher
John Wiley and Sons Inc
ISSN
1433-7851
Keyword (Author)
scintillatorsX-ray luminescence imagingcopper(I)-iodide clustermachine learning

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