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Convergence research and training in computational bioengineering: a case study on AI/ML driven biofilm-material interaction discovery

Initially, research disciplines operated independently, but the emergence of trans-disciplinary sciences led to convergence research, impacting graduate programs and research laboratories, especially in bioengineering and material engineering as presented here. Current graduate curriculum fails to e...

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Autores principales: Zylla, Jessica LS, Gnimpieba Z., Etienne, Bomgni, Alain B, Sani, Rajesh K, Subramaniam, Mahadevan, Lushbough, Carol, Winter, Robb, Gadhamshetty, Venkataramana R, Chundi, Parvathi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Journal Experts 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10503862/
https://www.ncbi.nlm.nih.gov/pubmed/37720037
http://dx.doi.org/10.21203/rs.3.rs-3318640/v1
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author Zylla, Jessica LS
Gnimpieba Z., Etienne
Bomgni, Alain B
Sani, Rajesh K
Subramaniam, Mahadevan
Lushbough, Carol
Winter, Robb
Gadhamshetty, Venkataramana R
Chundi, Parvathi
author_facet Zylla, Jessica LS
Gnimpieba Z., Etienne
Bomgni, Alain B
Sani, Rajesh K
Subramaniam, Mahadevan
Lushbough, Carol
Winter, Robb
Gadhamshetty, Venkataramana R
Chundi, Parvathi
author_sort Zylla, Jessica LS
collection PubMed
description Initially, research disciplines operated independently, but the emergence of trans-disciplinary sciences led to convergence research, impacting graduate programs and research laboratories, especially in bioengineering and material engineering as presented here. Current graduate curriculum fails to efficiently prepare students for multidisciplinary and convergence research, thus creating a gap between the students and research laboratory expectations. We present a convergence training framework for graduate students, incorporating problem-based learning under the guidance of senior scientists and collaboration with postdoctoral researchers. This case study serves as a template for transdisciplinary convergent training projects - bridging the expertise gap and fostering successful convergence learning experiences in computational biointerface (material-biology interface). The 18-month Advanced Data Science Workshop, initiated in 2019, involves project-based learning, online training modules, and data collection. A pilot solution utilized Jupyter notebook on Google collaborator and culminated in a face-to-face workshop where project presentations and finalization occurred. The program started with 9 experts in the four diverse fields creating 14 curated projects in data science (Artificial Intelligence/Machine Learning), material science, biofilm engineering, and biointerface. These were integrated into convergence research through webinars by the experts. The experts chose 8 of the 14 projects to be part of an all-day in-person workshop, where over 20 learners formed eight teams that tackled complex problems at the interface of digital image processing, gene expression analysis, and material prediction. Each team was comprised of students and postdoctoral researchers or research scientists from diverse domains including computer science, materials science, and biofilm research. Some projects were selected for presentation at the international IEEE Bioinformatics conference in 2022, with three resulting Machine Learning (ML) models submitted as a journal paper. Students engaged in problem discussions, collaborated with experts from different disciplines, and received guidance in decomposing learning objectives. Based on learner feedback, this successful experience allows for consolidation and integration of convergence research via problem-based learning into the curriculum. Three bioengineering participants, who received training in data science and engineering, have received bioinformatics jobs in biotechnology industries.
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spelling pubmed-105038622023-09-16 Convergence research and training in computational bioengineering: a case study on AI/ML driven biofilm-material interaction discovery Zylla, Jessica LS Gnimpieba Z., Etienne Bomgni, Alain B Sani, Rajesh K Subramaniam, Mahadevan Lushbough, Carol Winter, Robb Gadhamshetty, Venkataramana R Chundi, Parvathi Res Sq Article Initially, research disciplines operated independently, but the emergence of trans-disciplinary sciences led to convergence research, impacting graduate programs and research laboratories, especially in bioengineering and material engineering as presented here. Current graduate curriculum fails to efficiently prepare students for multidisciplinary and convergence research, thus creating a gap between the students and research laboratory expectations. We present a convergence training framework for graduate students, incorporating problem-based learning under the guidance of senior scientists and collaboration with postdoctoral researchers. This case study serves as a template for transdisciplinary convergent training projects - bridging the expertise gap and fostering successful convergence learning experiences in computational biointerface (material-biology interface). The 18-month Advanced Data Science Workshop, initiated in 2019, involves project-based learning, online training modules, and data collection. A pilot solution utilized Jupyter notebook on Google collaborator and culminated in a face-to-face workshop where project presentations and finalization occurred. The program started with 9 experts in the four diverse fields creating 14 curated projects in data science (Artificial Intelligence/Machine Learning), material science, biofilm engineering, and biointerface. These were integrated into convergence research through webinars by the experts. The experts chose 8 of the 14 projects to be part of an all-day in-person workshop, where over 20 learners formed eight teams that tackled complex problems at the interface of digital image processing, gene expression analysis, and material prediction. Each team was comprised of students and postdoctoral researchers or research scientists from diverse domains including computer science, materials science, and biofilm research. Some projects were selected for presentation at the international IEEE Bioinformatics conference in 2022, with three resulting Machine Learning (ML) models submitted as a journal paper. Students engaged in problem discussions, collaborated with experts from different disciplines, and received guidance in decomposing learning objectives. Based on learner feedback, this successful experience allows for consolidation and integration of convergence research via problem-based learning into the curriculum. Three bioengineering participants, who received training in data science and engineering, have received bioinformatics jobs in biotechnology industries. American Journal Experts 2023-09-08 /pmc/articles/PMC10503862/ /pubmed/37720037 http://dx.doi.org/10.21203/rs.3.rs-3318640/v1 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Zylla, Jessica LS
Gnimpieba Z., Etienne
Bomgni, Alain B
Sani, Rajesh K
Subramaniam, Mahadevan
Lushbough, Carol
Winter, Robb
Gadhamshetty, Venkataramana R
Chundi, Parvathi
Convergence research and training in computational bioengineering: a case study on AI/ML driven biofilm-material interaction discovery
title Convergence research and training in computational bioengineering: a case study on AI/ML driven biofilm-material interaction discovery
title_full Convergence research and training in computational bioengineering: a case study on AI/ML driven biofilm-material interaction discovery
title_fullStr Convergence research and training in computational bioengineering: a case study on AI/ML driven biofilm-material interaction discovery
title_full_unstemmed Convergence research and training in computational bioengineering: a case study on AI/ML driven biofilm-material interaction discovery
title_short Convergence research and training in computational bioengineering: a case study on AI/ML driven biofilm-material interaction discovery
title_sort convergence research and training in computational bioengineering: a case study on ai/ml driven biofilm-material interaction discovery
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10503862/
https://www.ncbi.nlm.nih.gov/pubmed/37720037
http://dx.doi.org/10.21203/rs.3.rs-3318640/v1
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