Clear-Box Machine Learning for Virtual Screening of 2D Nanozymes to Target Tumor Hydrogen Peroxide.
Xuejiao J GaoJun YanJia-Jia ZhengShengliang ZhongXuejiao J GaoPublished in: Advanced healthcare materials (2022)
Targeting tumor hydrogen peroxide (H 2 O 2 ) with catalytic materials has provided a novel chemotherapy strategy against solid tumors. Because numerous materials have been fabricated so far, there is an urgent need for an efficient in silico method, which can automatically screen out appropriate candidates from materials libraries for further therapeutic evaluation. In this work, adsorption-energy-based descriptors and criteria are developed for the catalase-like activities of materials surfaces. The result enables a comprehensive prediction of H 2 O 2 -targeted catalytic activities of materials by density functional theory (DFT) calculations. To expedite the prediction, machine learning models, which efficiently calculate the adsorption energies for 2D materials without DFT, are further developed. The finally obtained method takes advantage of both interpretability of physics model and high efficiency of machine learning. It provides an efficient approach for in silico screening of 2D materials toward tumor catalytic therapy, and it will greatly promote the development of catalytic nanomaterials for medical applications.
Keyphrases
- density functional theory
- hydrogen peroxide
- machine learning
- molecular dynamics
- nitric oxide
- molecular docking
- high efficiency
- artificial intelligence
- crystal structure
- stem cells
- healthcare
- transcription factor
- high throughput
- cancer therapy
- bone marrow
- rectal cancer
- mesenchymal stem cells
- candida albicans
- smoking cessation
- aqueous solution