Deep Learning Analysis on Images of iPSC-derived Motor Neurons Carrying fALS-genetics Reveals Disease-Relevant Phenotypes
Author:
Atmaramani Rahul, Dreossi Tommaso, Ford Kevin, Gan Lin, Mitchell Jana, Tu Shengjiang, Velayutham Jeevaa, Zeng Haoyang, Chickering Michael, Soare Tom, Sivanandan Srinivasan, Conrad Ryan, Bao Yujia, Akle Santiago, Liu Jonathan, Redmond Stephanie, Guo Syuan-Ming, Conrad Patrick, Yi Flora, Atkeson Nick, Xu Difei, McMorrow Aidan, Hergenreder Emiliano, Hari Mukund, Sandakli Ahmed, Mittal Nitya, Zhang Liyuan, Topol Aaron, Hartley Brigham, Lam Elaine, Krauel Eva-Maria, Karaletsos Theofanis, Labow Mark, Hargreaves Richard, Trotter Matthew, Biswas Shameek, Pisco Angela OliveiraORCID, Kaykas AjameteORCID, Koller DaphneORCID, Sances SamuelORCID
Abstract
SummaryAmyotrophic lateral sclerosis (ALS) is a devastating condition with very limited treatment options. It is a heterogeneous disease with complex genetics and unclear etiology, making the discovery of disease-modifying interventions very challenging. To discover novel mechanisms underlying ALS, we leverage a unique platform that combines isogenic, induced pluripotent stem cell (iPSC)-derived models of disease-causing mutations with rich phenotyping via high-content imaging and deep learning models. We introduced eight mutations that cause familial ALS (fALS) into multiple donor iPSC lines, and differentiated them into motor neurons to create multiple isogenic pairs of healthy (wild-type) and sick (mutant) motor neurons. We collected extensive high-content imaging data and used machine learning (ML) to process the images, segment the cells, and learn phenotypes. Self-supervised ML was used to create a concise embedding that captured significant, ALS-relevant biological information in these images. We demonstrate that ML models trained on core cell morphology alone can accurately predict TDP-43 mislocalization, a known phenotypic feature related to ALS. In addition, we were able to impute RNA expression from these image embeddings, in a way that elucidates molecular differences between mutants and wild-type cells. Finally, predictors leveraging these embeddings are able to distinguish between mutant and wild-type both within and across donors, defining cellular, ML-derived disease models for diverse fALS mutations. These disease models are the foundation for a novel screening approach to discover disease-modifying targets for familial ALS.
Publisher
Cold Spring Harbor Laboratory
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