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Machine learning‐based phenotypic screening for postmitotic growth inducers uncover vitamin D3 metabolites as small molecule ribosome agonists

OBJECTIVES: To restore tissue growth without increasing the risk for cancer during aging, there is a need to identify small molecule drugs that can increase cell growth without increasing cell proliferation. While there have been numerous high‐throughput drug screens for cell proliferation, there ha...

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Autores principales: Jiang, Zongmin, Zhang, Liping, Yao, Ziyue, Cao, Wenhua, Ma, Shilin, Chen, Yu, Guang, Lu, Zheng, Zipeng, Li, Chunwei, Yu, Kang, Shyh‐Chang, Ng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9136510/
https://www.ncbi.nlm.nih.gov/pubmed/35411556
http://dx.doi.org/10.1111/cpr.13214
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author Jiang, Zongmin
Zhang, Liping
Yao, Ziyue
Cao, Wenhua
Ma, Shilin
Chen, Yu
Guang, Lu
Zheng, Zipeng
Li, Chunwei
Yu, Kang
Shyh‐Chang, Ng
author_facet Jiang, Zongmin
Zhang, Liping
Yao, Ziyue
Cao, Wenhua
Ma, Shilin
Chen, Yu
Guang, Lu
Zheng, Zipeng
Li, Chunwei
Yu, Kang
Shyh‐Chang, Ng
author_sort Jiang, Zongmin
collection PubMed
description OBJECTIVES: To restore tissue growth without increasing the risk for cancer during aging, there is a need to identify small molecule drugs that can increase cell growth without increasing cell proliferation. While there have been numerous high‐throughput drug screens for cell proliferation, there have been few screens for post‐mitotic anabolic growth. MATERIALS AND METHODS: A machine learning (ML)‐based phenotypic screening strategy was used to discover metabolites that boost muscle growth. Western blot, qRT‐PCR and immunofluorescence staining were used to evaluate myotube hypertrophy/maturation or protein synthesis. Mass spectrometry (MS)‐based thermal proteome profiling‐temperature range (TPP‐TR) technology was used to identify the protein targets that bind the metabolites. Ribo‐MEGA size exclusion chromatography (SEC) analysis was used to verify whether the ribosome proteins bound to calcitriol. RESULTS: We discovered both the inactive cholecalciferol and the bioactive calcitriol are amongst the top hits that boost post‐mitotic growth. A large number of ribosomal proteins' melting curves were affected by calcitriol treatment, suggesting that calcitriol binds to the ribosome complex directly. Purified ribosomes directly bound to pure calcitriol. Moreover, we found that calcitriol could increase myosin heavy chain (MHC) protein translation and overall nascent protein synthesis in a cycloheximide‐sensitive manner, indicating that calcitriol can directly bind and enhance ribosomal activity to boost muscle growth. CONCLUSION: Through the combined strategy of ML‐based phenotypic screening and MS‐based omics, we have fortuitously discovered a new class of metabolite small molecules that can directly activate ribosomes to promote post‐mitotic growth.
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spelling pubmed-91365102022-06-04 Machine learning‐based phenotypic screening for postmitotic growth inducers uncover vitamin D3 metabolites as small molecule ribosome agonists Jiang, Zongmin Zhang, Liping Yao, Ziyue Cao, Wenhua Ma, Shilin Chen, Yu Guang, Lu Zheng, Zipeng Li, Chunwei Yu, Kang Shyh‐Chang, Ng Cell Prolif Original Articles OBJECTIVES: To restore tissue growth without increasing the risk for cancer during aging, there is a need to identify small molecule drugs that can increase cell growth without increasing cell proliferation. While there have been numerous high‐throughput drug screens for cell proliferation, there have been few screens for post‐mitotic anabolic growth. MATERIALS AND METHODS: A machine learning (ML)‐based phenotypic screening strategy was used to discover metabolites that boost muscle growth. Western blot, qRT‐PCR and immunofluorescence staining were used to evaluate myotube hypertrophy/maturation or protein synthesis. Mass spectrometry (MS)‐based thermal proteome profiling‐temperature range (TPP‐TR) technology was used to identify the protein targets that bind the metabolites. Ribo‐MEGA size exclusion chromatography (SEC) analysis was used to verify whether the ribosome proteins bound to calcitriol. RESULTS: We discovered both the inactive cholecalciferol and the bioactive calcitriol are amongst the top hits that boost post‐mitotic growth. A large number of ribosomal proteins' melting curves were affected by calcitriol treatment, suggesting that calcitriol binds to the ribosome complex directly. Purified ribosomes directly bound to pure calcitriol. Moreover, we found that calcitriol could increase myosin heavy chain (MHC) protein translation and overall nascent protein synthesis in a cycloheximide‐sensitive manner, indicating that calcitriol can directly bind and enhance ribosomal activity to boost muscle growth. CONCLUSION: Through the combined strategy of ML‐based phenotypic screening and MS‐based omics, we have fortuitously discovered a new class of metabolite small molecules that can directly activate ribosomes to promote post‐mitotic growth. John Wiley and Sons Inc. 2022-04-12 /pmc/articles/PMC9136510/ /pubmed/35411556 http://dx.doi.org/10.1111/cpr.13214 Text en © 2022 The Authors. Cell Proliferation published by John Wiley & Sons Ltd. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Articles
Jiang, Zongmin
Zhang, Liping
Yao, Ziyue
Cao, Wenhua
Ma, Shilin
Chen, Yu
Guang, Lu
Zheng, Zipeng
Li, Chunwei
Yu, Kang
Shyh‐Chang, Ng
Machine learning‐based phenotypic screening for postmitotic growth inducers uncover vitamin D3 metabolites as small molecule ribosome agonists
title Machine learning‐based phenotypic screening for postmitotic growth inducers uncover vitamin D3 metabolites as small molecule ribosome agonists
title_full Machine learning‐based phenotypic screening for postmitotic growth inducers uncover vitamin D3 metabolites as small molecule ribosome agonists
title_fullStr Machine learning‐based phenotypic screening for postmitotic growth inducers uncover vitamin D3 metabolites as small molecule ribosome agonists
title_full_unstemmed Machine learning‐based phenotypic screening for postmitotic growth inducers uncover vitamin D3 metabolites as small molecule ribosome agonists
title_short Machine learning‐based phenotypic screening for postmitotic growth inducers uncover vitamin D3 metabolites as small molecule ribosome agonists
title_sort machine learning‐based phenotypic screening for postmitotic growth inducers uncover vitamin d3 metabolites as small molecule ribosome agonists
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9136510/
https://www.ncbi.nlm.nih.gov/pubmed/35411556
http://dx.doi.org/10.1111/cpr.13214
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