Biography

Akash is a PhD candidate specializing in biomedical imaging informatics and computational and systems pathology. He is interested in investigating the intrinsic characteristics of biomedical images at multi-scale resolutions using statistical modeling, computer vision, machine learning, and graph-based deep learning techniques. He has developed explainable artificial intelligence (AI) algorithms to understand the origins of diagnostic discordance in differentially diagnosing a broad spectrum of breast lesions from digitized histopathology images. He is also serving as a Member of the Review Board for Journal of Pathology Informatics (JPI) and Signal, Image and Video Processing. He is also an active member of the Digital Pathology Association (DPA).

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Interests
  • Computational and Digital Pathology
  • Spatial Biology
  • Explainable Artificial Intelligence
  • Computer Vision
  • Biomedical Informatics
  • Graph Learning
  • Statistics and Machine Learning
Education
  • PhD Candidate in Computational Biology, expected Spring 2022

    Joint Carnegie-Mellon and University of Pittsburgh, USA

  • MS in Information Science, 2018

    University of Pittsburgh, USA

  • BTech in Electronics and Communication Engineering, 2016

    R.V. College of Engineering, India

Skills

Python
Jupyter Notebook
R
Statistics
GitHub
Linux

Experience

 
 
 
 
 
Joint Carnegie-Mellon and University of Pittsburgh School of Medicine
Graduate Student Researcher
Aug 2018 – Present Pittsburgh, USA
  • Investigate the mechanistic underpinnings of inter- and intra-class diagnostic variability in histopathology images and spatial intratumoral heterogeneity in multiplex image data
  • Develop computational pathology tools for the challenging task of correctly classifying sub-categories present within the diagnostic spectrum of breast lesions
  • Conceptualize an explainable AI framework intended to capture the visual diagnostic thinking of the pathologists
  • Build a computational pathology-based cognitive assistant by demonstrating perceptual and planning components which are useful in bringing the above technologies to everyday pathology practice
  • Advisor: Dr. S. Chakra Chennubhotla and Committee members: Dr. Jeffrey L. Fine, Dr. Robin E.C. Lee, Dr. Min Xu, and Dr. Arvind Ramanathan
 
 
 
 
 
University of Pittsburgh
Graduate Teaching Assistant
Sep 2019 – Dec 2019 Pittsburgh, USA
MSC 2065 Scalable Machine Learning for Big Data Biology
 
 
 
 
 
Oak Ridge National Laboratory (ORNL)
Advanced Short-Term Research Scientist
May 2018 – Aug 2018 Oak Ridge, USA
  • Developed computational tools to analyze high-throughput, low-resolution Cryo-Electron Microscopy images for betagalactosidase, a bacterial enzyme
  • Gathered necessary skills to use RELION (Regularized Likelihood Optimization) software that uses Bayesian statistics to reconstruct three-dimensional representation of biomolecules to near atomic resolution from two-dimensional micrographs data obtained by taking snapshots of macromolecule in different orientations
  • Mentor: Dr. Arvind Ramanathan
 
 
 
 
 
Oak Ridge National Laboratory (ORNL)
Advanced Short-Term Research Scientist
May 2017 – Jul 2017 Oak Ridge, USA
  • Contributed in developing ANCA software (Anharmonic Conformational Analysis) as an extensible framework to characterize anharmonic events and enable a deeper analysis of their functional relevance
  • Contributed in developing toolbox that provides modules to measure long tail behavior of complex protein fluctuations by chasing higher order statistics
  • Mentor: Dr. Arvind Ramanathan

Recent Publications

(2021). Artificial intelligence techniques for integrative structural biology of intrinsically disordered proteins. In Current Opinion in Structural Biology.

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(2020). Prototypical models for classifying high-risk atypical breast lesions. In MICCAI.

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(2020). Transient Unfolding and Long-Range Interactions in Viral BCL2 M11 Enable Binding to the BECN1 BH3 Domain. In Biomolecules.

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(2018). ANCA: Anharmonic Conformational Analysis of Biomolecular Simulations. In Biophysical journal.

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