Unsupervised optimization of protein therapeutics using closed-loop in vitro synthesis, nanosensing, and deep-learning

Information

  • Research Project
  • 10252011
  • ApplicationId
    10252011
  • Core Project Number
    R35GM138265
  • Full Project Number
    5R35GM138265-02
  • Serial Number
    138265
  • FOA Number
    PAR-17-190
  • Sub Project Id
  • Project Start Date
    9/5/2020 - 3 years ago
  • Project End Date
    6/30/2025 - 12 months from now
  • Program Officer Name
    LIU, CHRISTINA
  • Budget Start Date
    7/1/2021 - 3 years ago
  • Budget End Date
    6/30/2022 - 2 years ago
  • Fiscal Year
    2021
  • Support Year
    02
  • Suffix
  • Award Notice Date
    7/12/2021 - 2 years ago
Organizations

Unsupervised optimization of protein therapeutics using closed-loop in vitro synthesis, nanosensing, and deep-learning

Project Summary Overview of research: The Reuel Group at Iowa State University (founded Fall 2016) seeks to develop new materials, methods, and measurement devices for biomanufacturing, biotherapeutics, and biosensors. We have active work-streams in 1) optical nanosensors for protein binding, enzymatic activity, and cell membrane disruption, 2) scalable and reliable cell free protein synthesis (CFPS) methods for protein prototyping (extract and genetic template improvements), 3) microfluidics for droplet generation and measurement of CFPS products, interrogated by nanosensors, 4) algorithms for `big data' generated from nanosensors (machine learning and deep learning methods), 5) engineered endospores for time-delayed synthetic biology circuits, and 6) resonant radio frequency sensors for biomanufacturing, wound healing, and water quality. The overall vision of the research program is to simplify and improve the design and manufacturing of biological products (cells and proteins) for applications in therapies, advanced materials, and bio-electronics. Protein based therapies have demonstrated in clinic to be a potent tool in the treatment of many diseases. In recent years, the design, build, and test cycle to find therapies for new disease targets has improved dramatically using techniques such as surface display coupled to evolutionary selection. However, these mutagenic approaches have a few limitations, namely: 1) they require a suitable, naturally occurring sequence as a starting point, 2) they frequently optimize solely on a single desired feature, and 3) they operate as a `black box', meaning that generalizable design rules for in silico prediction of future products is not possible. It is the purpose of this MIRA for ESI research plan to design a closed-loop system that allows for unsupervised design and discovery of protein therapeutics that overcomes these limitations. Over the next five years we will build and integrate the system components which include enzymatic DNA synthesis coupled to cell free protein synthesis to rapidly prototype libraries of custom proteins in micro-droplet reactors. These proteins will then be characterized in the micro-droplets using optical nanosensors, to test for desired features such as stability, binding affinity, selectivity, hydrolytic activity, and/or membrane penetration. This will produce a large labeled data set (tying sequence to phenotypic properties) that can be used to train a deep learning neural network to self-determine sequence patterns for specific properties. Once the tuning coefficients of the network are found, the algorithm will then predict next best sequences which will be synthesized, tested, etc. such that the design loop progresses unsupervised until optimization criteria are met. This new approach will result in faster development of protein therapies that are optimized based on multiple criteria and not tied to existing, natural sequences. For patients this translates to more efficacious therapies with less side effects and a potential for reduced cost (due to shortened design timeline). At the end of the five-year project we will seek to translate this technology, via NIH SBIR funding, such that the new technology can make an impact on actual therapies.

IC Name
NATIONAL INSTITUTE OF GENERAL MEDICAL SCIENCES
  • Activity
    R35
  • Administering IC
    GM
  • Application Type
    5
  • Direct Cost Amount
    250000
  • Indirect Cost Amount
    113953
  • Total Cost
    363953
  • Sub Project Total Cost
  • ARRA Funded
    False
  • CFDA Code
    859
  • Ed Inst. Type
    BIOMED ENGR/COL ENGR/ENGR STA
  • Funding ICs
    NIGMS:363953\
  • Funding Mechanism
    Non-SBIR/STTR RPGs
  • Study Section
    ZRG1
  • Study Section Name
    Special Emphasis Panel
  • Organization Name
    IOWA STATE UNIVERSITY
  • Organization Department
    ENGINEERING (ALL TYPES)
  • Organization DUNS
    005309844
  • Organization City
    AMES
  • Organization State
    IA
  • Organization Country
    UNITED STATES
  • Organization Zip Code
    500112025
  • Organization District
    UNITED STATES