4.6 Article

Explaining Accurate Predictions of Multitarget Compounds with Machine Learning Models Derived for Individual Targets

Journal

MOLECULES
Volume 28, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/molecules28020825

Keywords

multitarget compounds; single-target compounds; machine learning; activity prediction; model explanation; feature analysis

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Compounds with multiple targets (MT-CPDs) are important in drug discovery, and computational approaches have been used to design or identify them. Machine learning models have been derived to distinguish between MT-CPDs and compounds with single-target activity (ST-CPDs). Surprisingly, it was found that models derived for ST-CPDs can accurately predict MT-CPDs, revealing a relationship between the two types of compounds.
In drug discovery, compounds with well-defined activity against multiple targets (multitarget compounds, MT-CPDs) provide the basis for polypharmacology and are thus of high interest. Typically, MT-CPDs for polypharmacology have been discovered serendipitously. Therefore, over the past decade, computational approaches have also been adapted for the design of MT-CPDs or their identification via computational screening. Such approaches continue to be under development and are far from being routine. Recently, different machine learning (ML) models have been derived to distinguish between MT-CPDs and corresponding compounds with activity against the individual targets (single-target compounds, ST-CPDs). When evaluating alternative models for predicting MT-CPDs, we discovered that MT-CPDs could also be accurately predicted with models derived for corresponding ST-CPDs; this was an unexpected finding that we further investigated using explainable ML. The analysis revealed that accurate predictions of ST-CPDs were determined by subsets of structural features of MT-CPDs required for their prediction. These findings provided a chemically intuitive rationale for the successful prediction of MT-CPDs using different ML models and uncovered general-feature subset relationships between MT- and ST-CPDs with activities against different targets.

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