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Interpretable Machine Learning of Two‐Photon Absorption

Yuming Su, Yiheng Dai, Yifan Zeng, Caiyun Wei, Yangtao Chen, Fuchun Ge, Peikun Zheng, Da Zhou, Pavlo O. Dral, Cheng Wang

2023Advanced Science27 citationsDOIOpen Access PDF

Abstract

Molecules with strong two-photon absorption (TPA) are important in many advanced applications such as upconverted laser and photodynamic therapy, but their design is hampered by the high cost of experimental screening and accurate quantum chemical (QC) calculations. Here a systematic study is performed by collecting an experimental TPA database with ≈900 molecules, analyzing with interpretable machine learning (ML) the key molecular features explaining TPA magnitudes, and building a fast ML model for predictions. The ML model has prediction errors of similar magnitude compared to experimental and affordable QC methods errors and has the potential for high-throughput screening as additionally validated with the new experimental measurements. ML feature analysis is generally consistent with common beliefs which is quantified and rectified. The most important feature is conjugation length followed by features reflecting the effects of donor and acceptor substitution and coplanarity.

Topics & Concepts

Feature (linguistics)Absorption (acoustics)Computer scienceTwo-photon absorptionCoplanarityPhotonMoleculeMaterials scienceBiological systemArtificial intelligenceLaserChemistryOpticsPhysicsMathematicsGeometryOrganic chemistryLinguisticsPhilosophyBiologyNonlinear Optical Materials StudiesOxidative Organic Chemistry ReactionsPorphyrin and Phthalocyanine Chemistry
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