Explainable machine learning for profiling the immunological synapse and functional characterization of therapeutic antibodies

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作者
Sayedali Shetab Boushehri
Katharina Essig
Nikolaos-Kosmas Chlis
Sylvia Herter
Marina Bacac
Fabian J. Theis
Elke Glasmacher
Carsten Marr
Fabian Schmich
机构
[1] German Research Center for Environmental Health,Institute of AI for Health, Helmholtz Zentrum München
[2] German Research Center for Environmental Health,Institute of Computational Biology, Helmholtz Zentrum München
[3] Department of Mathematics,Technical University of Munich
[4] Roche Innovation Center Munich,Data & Analytics (D&A), Roche Pharma Research and Early Development (pRED)
[5] Roche Innovation Center Munich,Large Molecule Research (LMR), Roche Pharma Research and Early Development (pRED)
[6] Roche Pharma Research and Early Development (pRED),Roche Innovation Center Zurich
[7] Roche Innovation Center Munich,Research and Early Development (RED), Roche Diagnostics Solutions
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摘要
Therapeutic antibodies are widely used to treat severe diseases. Most of them alter immune cells and act within the immunological synapse; an essential cell-to-cell interaction to direct the humoral immune response. Although many antibody designs are generated and evaluated, a high-throughput tool for systematic antibody characterization and prediction of function is lacking. Here, we introduce the first comprehensive open-source framework, scifAI (single-cell imaging flow cytometry AI), for preprocessing, feature engineering, and explainable, predictive machine learning on imaging flow cytometry (IFC) data. Additionally, we generate the largest publicly available IFC dataset of the human immunological synapse containing over 2.8 million images. Using scifAI, we analyze class frequency and morphological changes under different immune stimulation. T cell cytokine production across multiple donors and therapeutic antibodies is quantitatively predicted in vitro, linking morphological features with function and demonstrating the potential to significantly impact antibody design. scifAI is universally applicable to IFC data. Given its modular architecture, it is straightforward to incorporate into existing workflows and analysis pipelines, e.g., for rapid antibody screening and functional characterization.
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