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Multiscale modeling meets machine learning: What can we learn?
Peng, Grace C Y; Alber, Mark; Tepole, Adrian Buganza; Cannon, William R; De, Suvranu; Dura-Bernal, Salvador; Garikipati, Krishna; Karniadakis, George; Lytton, William W; Perdikaris, Paris; Petzold, Linda; Kuhl, Ellen.
Afiliação
  • Peng GCY; National Institutes of Health, Bethesda, Maryland, USA.
  • Alber M; University of California, Riverside, USA.
  • Tepole AB; Purdue University, Lafayette, Indiana, USA.
  • Cannon WR; Pacific Northwest National Laboratory, Richland, Washington, USA.
  • De S; Rensselaer Polytechnic Institute, Troy, New York, USA.
  • Dura-Bernal S; State University of New York, New York, USA.
  • Garikipati K; University of Michigan Ann Arbor, Michigan, USA.
  • Karniadakis G; Brown University, Providence, Rhode Island, USA.
  • Lytton WW; State University of New York, New York, USA.
  • Perdikaris P; University of Pennsylvania, Philadelphia, Pennsylvania, USA.
  • Petzold L; University of California, Santa Barbara, California, USA.
  • Kuhl E; Stanford University, Stanford, California, USA.
Arch Comput Methods Eng ; 28(3): 1017-1037, 2021 May.
Article em En | MEDLINE | ID: mdl-34093005
Machine learning is increasingly recognized as a promising technology in the biological, biomedical, and behavioral sciences. There can be no argument that this technique is incredibly successful in image recognition with immediate applications in diagnostics including electrophysiology, radiology, or pathology, where we have access to massive amounts of annotated data. However, machine learning often performs poorly in prognosis, especially when dealing with sparse data. This is a field where classical physics-based simulation seems to remain irreplaceable. In this review, we identify areas in the biomedical sciences where machine learning and multiscale modeling can mutually benefit from one another: Machine learning can integrate physics-based knowledge in the form of governing equations, boundary conditions, or constraints to manage ill-posted problems and robustly handle sparse and noisy data; multiscale modeling can integrate machine learning to create surrogate models, identify system dynamics and parameters, analyze sensitivities, and quantify uncertainty to bridge the scales and understand the emergence of function. With a view towards applications in the life sciences, we discuss the state of the art of combining machine learning and multiscale modeling, identify applications and opportunities, raise open questions, and address potential challenges and limitations. We anticipate that it will stimulate discussion within the community of computational mechanics and reach out to other disciplines including mathematics, statistics, computer science, artificial intelligence, biomedicine, systems biology, and precision medicine to join forces towards creating robust and efficient models for biological systems.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2021 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2021 Tipo de documento: Article