Singlet oxygen generation by porphyrins and metalloporphyrins revisited: A quantitative structure-property relationship (QSPR) study

被引:33
|
作者
Buglak, Andrey A. [1 ]
Filatov, Mikhail A. [2 ]
Althaf Hussain, M. [3 ]
Sugimoto, Manabu [3 ]
机构
[1] St Petersburg State Univ, St Petersburg 199034, Russia
[2] Technol Univ Dublin, Sch Chem & Pharmaceut Sci, City Campus,Kevin St, Dublin 8, Ireland
[3] Kumamoto Univ, Kumamoto 8608555, Japan
关键词
Porphyrins; Photosensitization; Singlet oxygen; Quantitative structure-property relationship; Machine learning; EFFECTIVE CORE POTENTIALS; EDGE-ADJACENCY MATRIX; MOLECULAR CALCULATIONS; SPECTRAL MOMENTS; SIMILARITY/DIVERSITY ANALYSIS; PHOTODYNAMIC THERAPY; DENSITY FUNCTIONALS; GETAWAY DESCRIPTORS; DRUG-DELIVERY; GRAPHS;
D O I
10.1016/j.jphotochem.2020.112833
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Porphyrins and metalloporphyrins are used as photosensitizers in photocatalysis, photodynamic therapy (PDT), disinfection, degradation of persistent pollutants and other applications. Their mechanism of action involves intersystem crossing to triplet excited state followed by formation of singlet oxygen (O-1(2)), which is a highly reactive species and mediates various oxidative processes. The design of advanced sensitizers based on porphyrin compounds have attracted significant attention in recent years. However, it is still difficult to predict the efficiency of singlet oxygen generation for a given structure. Our goal was to develop a quantitative structureproperty relationship (QSPR) model for the fast virtual screening and prediction of singlet oxygen quantum yields for pophyrins and metalloporphyrins. We performed QSPR analysis of a dataset containing 32 compounds, including various porphyrins and their analogues (chlorins and bacteriochlorins). Quantum-chemical descriptors were calculated using Density Functional Theory (DFT), namely B3LYP and M062X functionals. Three different machine learning methods were used to develop QSPR models: random forest regression (RFR), support vector regression (SVR), and multiple linear regression (MLR). The optimal QSPR model "structure - singlet oxygen generation quantum yield" obtained using RFR method demonstrated high determination coefficient for the training set (R-2 = 0.949) and the highest predicting ability for the test set (pred_R-2 = 0.875). This proves that the developed QSPR method is realiable and can be directly applied in the studies of singlet oxygen generation both for free base porphyrins and their metal complexes. We believe that QSPR approach developed in this study can be useful for the search of new poprhyrin photosensitizers with enhanced singlet oxygen generation ability.
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页数:12
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