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Dive into the research topics where Ramesh Sridharan is active.

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Featured researches published by Ramesh Sridharan.


NeuroImage | 2012

Search for Patterns of Functional Specificity in the Brain: A Nonparametric Hierarchical Bayesian Model for Group fMRI Data

Danial Lashkari; Ramesh Sridharan; Edward Vul; Po-Jang Hsieh; Nancy Kanwisher; Polina Golland

Functional MRI studies have uncovered a number of brain areas that demonstrate highly specific functional patterns. In the case of visual object recognition, small, focal regions have been characterized with selectivity for visual categories such as human faces. In this paper, we develop an algorithm that automatically learns patterns of functional specificity from fMRI data in a group of subjects. The method does not require spatial alignment of functional images from different subjects. The algorithm is based on a generative model that comprises two main layers. At the lower level, we express the functional brain response to each stimulus as a binary activation variable. At the next level, we define a prior over sets of activation variables in all subjects. We use a Hierarchical Dirichlet Process as the prior in order to learn the patterns of functional specificity shared across the group, which we call functional systems, and estimate the number of these systems. Inference based on our model enables automatic discovery and characterization of dominant and consistent functional systems. We apply the method to data from a visual fMRI study comprised of 69 distinct stimulus images. The discovered system activation profiles correspond to selectivity for a number of image categories such as faces, bodies, and scenes. Among systems found by our method, we identify new areas that are deactivated by face stimuli. In empirical comparisons with previously proposed exploratory methods, our results appear superior in capturing the structure in the space of visual categories of stimuli.


medical image computing and computer-assisted intervention | 2014

Segmentation of Cerebrovascular Pathologies in Stroke Patients with Spatial and Shape Priors

Adrian V. Dalca; Ramesh Sridharan; Lisa Cloonan; Kaitlin Fitzpatrick; Allison Kanakis; Karen L. Furie; Jonathan Rosand; Ona Wu; Mert R. Sabuncu; Natalia S. Rost; Polina Golland

We propose and demonstrate an inference algorithm for the automatic segmentation of cerebrovascular pathologies in clinical MR images of the brain. Identifying and differentiating pathologies is important for understanding the underlying mechanisms and clinical outcomes of cerebral ischemia. Manual delineation of separate pathologies is infeasible in large studies of stroke that include thousands of patients. Unlike normal brain tissues and structures, the location and shape of the lesions vary across patients, presenting serious challenges for prior-driven segmentation. Our generative model captures spatial patterns and intensity properties associated with different cerebrovascular pathologies in stroke patients. We demonstrate the resulting segmentation algorithm on clinical images of a stroke patient cohort.


computer vision and pattern recognition | 2010

Nonparametric hierarchical Bayesian model for functional brain parcellation

Danial Lashkari; Ramesh Sridharan; Edward Vul; Po-Jang Hsieh; Nancy Kanwisher; Polina Golland

We develop a method for unsupervised analysis of functional brain images that learns group-level patterns of functional response. Our algorithm is based on a generative model that comprises two main layers. At the lower level, we express the functional brain response to each stimulus as a binary activation variable. At the next level, we define a prior over the sets of activation variables in all subjects. We use a Hierarchical Dirichlet Process as the prior in order to simultaneously learn the patterns of response that are shared across the group, and to estimate the number of these patterns supported by data. Inference based on this model enables automatic discovery and characterization of salient and consistent patterns in functional signals. We apply our method to data from a study that explores the response of the visual cortex to a collection of images. The discovered profiles of activation correspond to selectivity to a number of image categories such as faces, bodies, and scenes. More generally, our results appear superior to the results of alternative data-driven methods in capturing the category structure in the space of stimuli.


medical image computing and computer-assisted intervention | 2015

Predictive Modeling of Anatomy with Genetic and Clinical Data.

Adrian V. Dalca; Ramesh Sridharan; Mert R. Sabuncu; Polina Golland

We present a semi-parametric generative model for predicting anatomy of a patient in subsequent scans following a single baseline image. Such predictive modeling promises to facilitate novel analyses in both voxel-level studies and longitudinal biomarker evaluation. We capture anatomical change through a combination of population-wide regression and a non-parametric model of the subjects health based on individual genetic and clinical indicators. In contrast to classical correlation and longitudinal analysis, we focus on predicting new observations from a single subject observation. We demonstrate prediction of follow-up anatomical scans in the ADNI cohort, and illustrate a novel analysis approach that compares a patients scans to the predicted subject-specific healthy anatomical trajectory.


Archive | 2008

Infusing Parallelism into Introductory Computer Science Curriculum using MapReduce

Matthew J. Johnson; Robert H. Liao; Alexander Rasmussen; Ramesh Sridharan; Daniel D. Garcia; Brian Harvey


neural information processing systems | 2010

Categories and Functional Units: An Infinite Hierarchical Model for Brain Activations

Danial Lashkari; Ramesh Sridharan; Polina Golland


Lecture Notes in Computer Science | 2013

Quantification and Analysis of Large Multimodal Clinical Image Studies: Application to Stroke

Ramesh Sridharan; Adrian V. Dalca; Lisa Cloonan; Allison Kanakis; Karen L. Furie; Jonathan Rosand; Natalia S. Rost; Polina Golland


Neurology Genetics | 2017

Design and rationale for examining neuroimaging genetics in ischemic stroke: The MRI-GENIE study

Anne-Katrin Giese; Markus Schirmer; Kathleen L Donahue; Lisa Cloonan; Robert Irie; Stefan Winzeck; Mark. J. R. J. Bouts; Elissa McIntosh; Steven Mocking; Adrian V. Dalca; Ramesh Sridharan; Huichun Xu; Petrea Frid; Eva Giralt-Steinhauer; Lukas Holmegaard; Jaume Roquer; Johan Wasselius; John W. Cole; Patrick F. McArdle; Joseph P. Broderick; Jordi Jimenez-Conde; Christina Jern; Brett Kissela; Dawn Kleindorfer; Robin Lemmens; Arne Lindgren; James F. Meschia; Tatjana Rundek; Ralph L. Sacco; Reinhold Schmidt


PMC | 2015

Predictive Modeling of Anatomy with Genetic and Clinical Data

Adrian V. Dalca; Ramesh Sridharan; Mert R. Sabuncu; Polina Golland


PMC | 2011

Search for patterns of functional specificity in the brain: A nonparametric hierarchical Bayesian model for group fMRI data

Danial Lashkari; Ramesh Sridharan; Edward Vul; Po-Jang Hsieh; Nancy Kanwisher; Polina Golland

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Polina Golland

Massachusetts Institute of Technology

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Adrian V. Dalca

Massachusetts Institute of Technology

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Danial Lashkari

Massachusetts Institute of Technology

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Edward Vul

University of California

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Nancy Kanwisher

Massachusetts Institute of Technology

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Po-Jang Hsieh

National University of Singapore

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