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      Sonification based de novo protein design using artificial intelligence, structure prediction, and analysis using molecular modeling

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      1,2 , 1 , a)
      APL Bioengineering
      AIP Publishing LLC

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          Abstract

          We report the use of a deep learning model to design de novo proteins, based on the interplay of elementary building blocks via hierarchical patterns. The deep neural network model is based on translating protein sequences and structural information into a musical score that features different pitches for each of the amino acids, and variations in note length and note volume reflecting secondary structure information and information about the chain length and distinct protein molecules. We train a deep learning model whose architecture is composed of several long short-term memory units from data consisting of musical representations of proteins classified by certain features, focused here on alpha-helix rich proteins. Using the deep learning model, we then generate de novo musical scores and translate the pitch information and chain lengths into sequences of amino acids. We use a Basic Local Alignment Search Tool to compare the predicted amino acid sequences against known proteins, and estimate folded protein structures using the Optimized protein fold RecognitION method (ORION) and MODELLER. We find that the method proposed here can be used to design de novo proteins that do not exist yet, and that the designed proteins fold into specified secondary structures. We validate the newly predicted protein by molecular dynamics equilibration in explicit water and subsequent characterization using a normal mode analysis. The method provides a tool to design novel protein materials that could find useful applications as materials in biology, medicine, and engineering.

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          Most cited references33

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          Nature’s hierarchical materials

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            COFACTOR: improved protein function prediction by combining structure, sequence and protein–protein interaction information

            Abstract The COFACTOR web server is a unified platform for structure-based multiple-level protein function predictions. By structurally threading low-resolution structural models through the BioLiP library, the COFACTOR server infers three categories of protein functions including gene ontology, enzyme commission and ligand-binding sites from various analogous and homologous function templates. Here, we report recent improvements of the COFACTOR server in the development of new pipelines to infer functional insights from sequence profile alignments and protein–protein interaction networks. Large-scale benchmark tests show that the new hybrid COFACTOR approach significantly improves the function annotation accuracy of the former structure-based pipeline and other state-of-the-art functional annotation methods, particularly for targets that have no close homology templates. The updated COFACTOR server and the template libraries are available at http://zhanglab.ccmb.med.umich.edu/COFACTOR/.
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              Bioinspired hierarchical composite design using machine learning: simulation, additive manufacturing, and experiment

              A new approach to design hierarchical materials using convolutional neural networks is proposed and validated through additive manufacturing and testing. Biomimicry, adapting and implementing nature's designs provides an adequate first-order solution to achieving superior mechanical properties. However, the design space is too vast even using biomimetic designs as prototypes for optimization. Here, we propose a new approach to design hierarchical materials using machine learning, trained with a database of hundreds of thousands of structures from finite element analysis, together with a self-learning algorithm for discovering high-performing materials where inferior designs are phased out for superior candidates. Results show that our approach can create microstructural patterns that lead to tougher and stronger materials, which are validated through additive manufacturing and testing. We further show that machine learning can be used as an alternative method of coarse-graining – analyzing and designing materials without the use of full microstructural data. This novel paradigm of smart additive manufacturing can aid in the discovery and fabrication of new material designs boasting orders of magnitude increase in computational efficacy over conventional methods.
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                Author and article information

                Contributors
                Journal
                APL Bioeng
                APL Bioeng
                ABPID9
                APL Bioengineering
                AIP Publishing LLC
                2473-2877
                March 2020
                17 March 2020
                17 March 2020
                : 4
                : 1
                : 016108
                Affiliations
                [1 ]Laboratory for Atomistic and Molecular Mechanics (LAMM), Department of Civil and Environmental Engineering, Massachusetts Institute of Technology , 77 Massachusetts Ave. 1-290, Cambridge, Massachusetts 02139, USA
                [2 ]Department of Engineering Science, National Cheng Kung University , No.1, University Road, Tainan City 701, Taiwan
                Author notes
                [a) ] Author to whom correspondence should be addressed: mbuehler@ 123456MIT.EDU . Tel.: +1.617.452.2750.
                Author information
                https://orcid.org/0000-0001-9445-3358
                https://orcid.org/0000-0002-4173-9659
                Article
                1.5133026 APB19-AR-00129
                10.1063/1.5133026
                7078008
                32206742
                27608d98-e1aa-4d87-b7ac-50553400c4e7
                © Author(s).

                2473-2877/2020/4(1)/016108/11

                All article content, except where otherwise noted, is licensed under a Creative Commons Attribution (CC BY) license ( http://creativecommons.org/licenses/by/4.0/).

                History
                : 22 October 2019
                : 29 January 2020
                Page count
                Pages: 11
                Funding
                Funded by: MIT Center for Art, Science, and Technology
                Award ID: MIT internal
                Funded by: Mellon Foundation
                Award ID: N/A
                Funded by: Office of Naval Research https://doi.org/10.13039/100000006
                Award ID: N00014-16-1-2333
                Funded by: National Institutes of Health https://doi.org/10.13039/100000002
                Award ID: U01-EB014976
                Funded by: Army Research Office https://doi.org/10.13039/100000183
                Award ID: 73793EG
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