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    We developed PScL-SDNNMAE, a novel method for predicting protein subcellular localization using bioimages. This approach enhances accuracy by integrating classical and deep features extracted via self-supervised learning, outperforming existing predictors.

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    Area of Science:

    • Computational Biology
    • Cell Biology
    • Bioinformatics

    Background:

    • Accurate protein subcellular localization is vital for cellular function and drug design.
    • Existing computational methods lack sufficient performance in feature extraction.
    • There is a need for efficient vision learners utilizing self-supervised learning for deep feature extraction.

    Purpose of the Study:

    • To propose PScL-SDNNMAE, a novel bioimage-based method for predicting protein subcellular localization in human cells.
    • To enhance the accuracy and generalization capability of subcellular localization prediction.
    • To leverage self-supervised learning for effective feature representation from bioimages.

    Main Methods:

    • Feature extraction using traditional image descriptors and a masked autoencoder (MAE) for deep features.
    • Feature selection using Analysis of Variance (ANOVA), Mutual Information (MI), and stepwise discriminant analysis (SDA).
    • Classification using a deep neural network (DNN) trained on an integrated feature set.

    Main Results:

    • PScL-SDNNMAE demonstrated superior performance and generalization compared to state-of-the-art predictors on benchmark experiments.
    • 10-fold cross-validation and independent testing confirmed the method's effectiveness.
    • Self-supervised learning proved effective for learning representations from IHC images.

    Conclusions:

    • PScL-SDNNMAE offers an advanced approach for protein subcellular localization prediction.
    • The study highlights the potential of self-supervised learning in bioimage analysis.
    • Future work may involve pre-training on large unlabeled datasets for further improvements.