Unraveling subcellular heterogeneity of molecular coordination by machine learning

Information

  • Research Project
  • 10004666
  • ApplicationId
    10004666
  • Core Project Number
    R35GM133725
  • Full Project Number
    5R35GM133725-02
  • Serial Number
    133725
  • FOA Number
    PAR-17-190
  • Sub Project Id
  • Project Start Date
    9/15/2019 - 5 years ago
  • Project End Date
    8/31/2024 - 5 months ago
  • Program Officer Name
    SAMMAK, PAUL J
  • Budget Start Date
    9/1/2020 - 4 years ago
  • Budget End Date
    8/31/2021 - 3 years ago
  • Fiscal Year
    2020
  • Support Year
    02
  • Suffix
  • Award Notice Date
    9/21/2020 - 4 years ago

Unraveling subcellular heterogeneity of molecular coordination by machine learning

PROJECT SUMMARY/ABSTRACT Recent advances in fluorescence microscopy allow researchers to acquire an unprecedented amount of live cell image data at high spatial and temporal resolutions. However, these images pose a significant challenge for data analyses due to massive subcellular heterogeneity. Although conventional computer vision algorithms have facilitated automatic image analysis, traditional ensemble-averaging of subcellular heterogeneity could lead to the loss of critical mechanistic details. Given the current rapid growth of cell biological data from new technological development, it is nearly impossible to keep up with the data generation if we solely rely on human intelligence for algorithm development and data analysis. Recently, machine learning (ML) is making tremendous progress and has shown that computers can outperform humans in the analysis of complex high dimensional datasets. Conventional ML application in cell biology, however, is usually limited to fixed cells or low spatial resolution setting (single cell resolution), which is limited in analyzing dynamic subcellular information. To fill this voids, we have been developing an ML framework for fluorescence live cell image analyses at the subcellular level. In our previous study, we established the method to deconvolve the subcellular heterogeneity of lamellipodial protrusion from live cell imaging, which identified distinct subcellular protrusion phenotypes with differential drug susceptibility. Thus, our goal is to advance this ML framework and address technical and cell biological challenges in the live cell analysis. The overall goal of our research is two- fold: i) advancing a new ML framework for cell biological research (technological development) and ii) applying our ML framework to integrate mechanobiology and metabolism in cell protrusion (targeted cell biological study). First, we will advance our ML framework for the deconvolution of subcellular heterogeneity of protrusion and molecular coordination in live cells. This method will integrate time-series modeling and ML to deconvolve subcellular molecular coordination. Second, we will develop deep learning based high-throughput fluorescence live cell imaging. This will include microscope automation, resolution enhancement, and data synthesis, which will build up the massive dataset for ML. Third, we will apply our ML framework to study the mechanosensitivity of subcellular bioenergetic status in cell protrusion. We will evaluate how AMPK reacts to mechanical forces and controls the subcellular organization of actin assembly and mitochondria to promote energy-demanding protrusion phenotypes. Our ML framework will bring unprecedented analytical power to cell biology by analyzing a large numbers of individual cells at the high spatial resolution and automatically extracting a multitude of subcellular phenotypes. This framework can be applied to various areas of cell biology such as cytoskeleton, membrane remodeling, and membrane-bound organelles.

IC Name
NATIONAL INSTITUTE OF GENERAL MEDICAL SCIENCES
  • Activity
    R35
  • Administering IC
    GM
  • Application Type
    5
  • Direct Cost Amount
    250000
  • Indirect Cost Amount
    126885
  • Total Cost
    376885
  • Sub Project Total Cost
  • ARRA Funded
    False
  • CFDA Code
    859
  • Ed Inst. Type
    BIOMED ENGR/COL ENGR/ENGR STA
  • Funding ICs
    NIGMS:376885\
  • Funding Mechanism
    Non-SBIR/STTR RPGs
  • Study Section
    ZGM1
  • Study Section Name
    Special Emphasis Panel
  • Organization Name
    WORCESTER POLYTECHNIC INSTITUTE
  • Organization Department
    BIOMEDICAL ENGINEERING
  • Organization DUNS
    041508581
  • Organization City
    WORCESTER
  • Organization State
    MA
  • Organization Country
    UNITED STATES
  • Organization Zip Code
    016092247
  • Organization District
    UNITED STATES