scCamAge: A context-aware prediction engine for cellular age, aging-associated bioactivities, and morphometrics
Vishakha Gautam,
Subhadeep Duari,
Saveena Solanki,
Mudit Gupta,
Aayushi Mittal,
Sakshi Arora,
Anmol Aggarwal,
Anmol Kumar Sharma,
Sarthak Tyagi,
Rathod Kunal Pankajbhai,
Arushi Sharma,
Sonam Chauhan,
Shiva Satija,
Suvendu Kumar,
Sanjay Kumar Mohanty,
Juhi Tayal,
Nilesh Kumar Dixit,
Debarka Sengupta,
Anurag Mehta,
Gaurav Ahuja
Affiliations
Vishakha Gautam
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India; Corresponding author
Subhadeep Duari
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Saveena Solanki
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Mudit Gupta
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Aayushi Mittal
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Sakshi Arora
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Anmol Aggarwal
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Anmol Kumar Sharma
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Sarthak Tyagi
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Rathod Kunal Pankajbhai
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Arushi Sharma
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Sonam Chauhan
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Shiva Satija
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Suvendu Kumar
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Sanjay Kumar Mohanty
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Juhi Tayal
Rajiv Gandhi Cancer Institute & Research Centre, Sir Chotu Ram Marg, Rohini Institutional Area, Sector 5, Rohini, New Delhi 110085, India
Nilesh Kumar Dixit
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Debarka Sengupta
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India; Infosys Centre for AI, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India
Anurag Mehta
Rajiv Gandhi Cancer Institute & Research Centre, Sir Chotu Ram Marg, Rohini Institutional Area, Sector 5, Rohini, New Delhi 110085, India
Gaurav Ahuja
Department of Computational Biology, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India; Infosys Centre for AI, Indraprastha Institute of Information Technology - Delhi (IIIT-Delhi), Okhla, Phase III, New Delhi 110020, India; Corresponding author
Summary: Current deep-learning-based image-analysis solutions exhibit limitations in holistically capturing spatiotemporal cellular changes, particularly during aging. We present scCamAge, an advanced context-aware multimodal prediction engine that co-leverages image-based cellular spatiotemporal features at single-cell resolution alongside cellular morphometrics and aging-associated bioactivities such as genomic instability, mitochondrial dysfunction, vacuolar dynamics, reactive oxygen species levels, and epigenetic and proteasomal dysfunctions. scCamAge employed heterogeneous datasets comprising ∼1 million single yeast cells and was validated using pro-longevity drugs, genetic mutants, and stress-induced models. scCamAge also predicted a pro-longevity response in yeast cells under iterative thermal stress, confirmed using integrative omics analyses. Interestingly, scCamAge, trained solely on yeast images, without additional learning, surpasses generic models in predicting chemical and replication-induced senescence in human fibroblasts, indicating evolutionary conservation of aging-related morphometrics. Finally, we enhanced the generalizability of scCamAge by retraining it on human fibroblast senescence datasets, which improved its ability to predict senescent cells.