Integrating transformer and autoencoder techniques with spectral graph algorithms for the prediction of scarcely labeled molecular data

In molecular and biological sciences, experiments are expensive, time-consuming, and often subject to ethical constraints. Consequently, one often faces the challenging task of predicting desirable properties from small data sets or scarcely-labeled data sets. Although transfer learning can be advan...

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Bibliographic Details
Published inComputers in biology and medicine Vol. 153; p. 106479
Main Authors Hayes, Nicole, Merkurjev, Ekaterina, Wei, Guo-Wei
Format Journal Article
LanguageEnglish
Published United States Elsevier Ltd 01.02.2023
Elsevier Limited
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Summary:In molecular and biological sciences, experiments are expensive, time-consuming, and often subject to ethical constraints. Consequently, one often faces the challenging task of predicting desirable properties from small data sets or scarcely-labeled data sets. Although transfer learning can be advantageous, it requires the existence of a related large data set. This work introduces three graph-based models incorporating Merriman–Bence–Osher (MBO) techniques to tackle this challenge. Specifically, graph-based modifications of the MBO scheme are integrated with state-of-the-art techniques, including a home-made transformer and an autoencoder, in order to deal with scarcely-labeled data sets. In addition, a consensus technique is detailed. The proposed models are validated using five benchmark data sets. We also provide a thorough comparison to other competing methods, such as support vector machines, random forests, and gradient boosting decision trees, which are known for their good performance on small data sets. The performances of various methods are analyzed using residue-similarity (R-S) scores and R-S indices. Extensive computational experiments and theoretical analysis show that the new models perform very well even when as little as 1% of the data set is used as labeled data. [Display omitted] •Three new machine learning models for data classification are proposed in this paper.•The proposed methods are very useful for the case of a small amount of labeled data.•The proposed techniques incorporate molecular fingerprints for multi-task learning.•We integrate autoencoders, bidirectional encoder transformers, circular fingerprints.•The performances are analyzed using residue-similarity (R-S) scores and R-S indices.
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ISSN:0010-4825
1879-0534
1879-0534
DOI:10.1016/j.compbiomed.2022.106479