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Dive into the research topics where Dean M. Kleissas is active.

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Featured researches published by Dean M. Kleissas.


statistical and scientific database management | 2013

The open connectome project data cluster: scalable analysis and vision for high-throughput neuroscience

Randal C. Burns; Kunal Lillaney; Daniel R. Berger; Logan Grosenick; Karl Deisseroth; R. Clay Reid; William Gray Roncal; Priya Manavalan; Davi Bock; Narayanan Kasthuri; Michael M. Kazhdan; Stephen J. Smith; Dean M. Kleissas; Eric Perlman; Kwanghun Chung; Nicholas C. Weiler; Jeff W. Lichtman; Alexander S. Szalay; Joshua T. Vogelstein; R. Jacob Vogelstein

We describe a scalable database cluster for the spatial analysis and annotation of high-throughput brain imaging data, initially for 3-d electron microscopy image stacks, but for time-series and multi-channel data as well. The system was designed primarily for workloads that build connectomes---neural connectivity maps of the brain---using the parallel execution of computer vision algorithms on high-performance compute clusters. These services and open-science data sets are publicly available at openconnecto.me. The system design inherits much from NoSQL scale-out and data-intensive computing architectures. We distribute data to cluster nodes by partitioning a spatial index. We direct I/O to different systems---reads to parallel disk arrays and writes to solid-state storage---to avoid I/O interference and maximize throughput. All programming interfaces are RESTful Web services, which are simple and stateless, improving scalability and usability. We include a performance evaluation of the production system, highlighting the effectiveness of spatial data organization.


Neuron | 2016

To the Cloud! A Grassroots Proposal to Accelerate Brain Science Discovery

Joshua T. Vogelstein; Brett D. Mensh; Michael Häusser; Nelson Spruston; Alan C. Evans; Konrad P. Körding; Katrin Amunts; Christoph Ebell; Jeff Muller; Martin Telefont; Sean L. Hill; Sandhya P. Koushika; Corrado Calì; Pedro A. Valdes-Sosa; Peter B. Littlewood; Christof Koch; Stephan Saalfeld; Adam Kepecs; Hanchuan Peng; Yaroslav O. Halchenko; Gregory Kiar; Mu-ming Poo; Jean Baptiste Poline; Michael P. Milham; Alyssa Picchini Schaffer; Rafi Gidron; Hideyuki Okano; Vince D. Calhoun; Miyoung Chun; Dean M. Kleissas

The revolution in neuroscientific data acquisition is creating an analysis challenge. We propose leveraging cloud-computing technologies to enable large-scale neurodata storing, exploring, analyzing, and modeling. This utility will empower scientists globally to generate and test theories of brain function and dysfunction.


ieee global conference on signal and information processing | 2013

MIGRAINE: MRI Graph Reliability Analysis and Inference for Connectomics

William Gray Roncal; Zachary H. Koterba; Disa Mhembere; Dean M. Kleissas; Joshua T. Vogelstein; Randal C. Burns; Anita R. Bowles; Dimitrios K. Donavos; Sephira G. Ryman; Rex E. Jung; Lei Wu; Vince D. Calhoun; R. Jacob Vogelstein

Currently, connectomes (e.g., functional or structural brain graphs) can be estimated in humans at ≈ 1 mm3 scale using a combination of diffusion weighted magnetic resonance imaging, functional magnetic resonance imaging and structural magnetic resonance imaging scans. This manuscript summarizes a novel, scalable implementation of open-source algorithms to rapidly estimate magnetic resonance connectomes, using both anatomical regions of interest (ROIs) and voxel-size vertices. To assess the reliability of our pipeline, we develop a novel non-parametric non-Euclidean reliability metric. Here we provide an overview of the methods used, demonstrate our implementation, and discuss available user extensions. We conclude with results showing the efficacy and reliability of the pipeline over previous state-of-the-art.


Frontiers in Neuroinformatics | 2015

An automated images-to-graphs framework for high resolution connectomics.

William Gray Roncal; Dean M. Kleissas; Joshua T. Vogelstein; Priya Manavalan; Kunal Lillaney; Michael Pekala; Randal C. Burns; R. Jacob Vogelstein; Carey E. Priebe; Mark A. Chevillet; Gregory D. Hager

Reconstructing a map of neuronal connectivity is a critical challenge in contemporary neuroscience. Recent advances in high-throughput serial section electron microscopy (EM) have produced massive 3D image volumes of nanoscale brain tissue for the first time. The resolution of EM allows for individual neurons and their synaptic connections to be directly observed. Recovering neuronal networks by manually tracing each neuronal process at this scale is unmanageable, and therefore researchers are developing automated image processing modules. Thus far, state-of-the-art algorithms focus only on the solution to a particular task (e.g., neuron segmentation or synapse identification). In this manuscript we present the first fully-automated images-to-graphs pipeline (i.e., a pipeline that begins with an imaged volume of neural tissue and produces a brain graph without any human interaction). To evaluate overall performance and select the best parameters and methods, we also develop a metric to assess the quality of the output graphs. We evaluate a set of algorithms and parameters, searching possible operating points to identify the best available brain graph for our assessment metric. Finally, we deploy a reference end-to-end version of the pipeline on a large, publicly available data set. This provides a baseline result and framework for community analysis and future algorithm development and testing. All code and data derivatives have been made publicly available in support of eventually unlocking new biofidelic computational primitives and understanding of neuropathologies.


GigaScience | 2017

Science in the cloud (SIC): A use case in MRI connectomics

Gregory Kiar; Krzysztof J. Gorgolewski; Dean M. Kleissas; William Gray Roncal; Brian Litt; Brian A. Wandell; Russel A. Poldrack; Martin Wiener; R. Jacob Vogelstein; Randal C. Burns; Joshua T. Vogelstein

Abstract Modern technologies are enabling scientists to collect extraordinary amounts of complex and sophisticated data across a huge range of scales like never before. With this onslaught of data, we can allow the focal point to shift from data collection to data analysis. Unfortunately, lack of standardized sharing mechanisms and practices often make reproducing or extending scientific results very difficult. With the creation of data organization structures and tools that drastically improve code portability, we now have the opportunity to design such a framework for communicating extensible scientific discoveries. Our proposed solution leverages these existing technologies and standards, and provides an accessible and extensible model for reproducible research, called ‘science in the cloud’ (SIC). Exploiting scientific containers, cloud computing, and cloud data services, we show the capability to compute in the cloud and run a web service that enables intimate interaction with the tools and data presented. We hope this model will inspire the community to produce reproducible and, importantly, extensible results that will enable us to collectively accelerate the rate at which scientific breakthroughs are discovered, replicated, and extended.


international conference of the ieee engineering in medicine and biology society | 2016

Embedded clutter reduction and face detection algorithms for a visual prosthesis

Derek M. Rollend; Paul E. Rosendall; Kevin C. Wolfe; Dean M. Kleissas; Seth Billings; Jonathan M. Oben; John B. Helder; Francesco Tenore; Philippe Burlina; Arup Roy; Robert J. Greenberg; Kapil D. Katyal

Retinal prosthetic devices can significantly and positively impact the ability of visually challenged individuals to live a more independent life. We describe a visual processing system which leverages image analysis techniques to produce visual patterns and allows the user to more effectively perceive their environment. These patterns are used to stimulate a retinal prosthesis to allow self guidance and a higher degree of autonomy for the affected individual. Specifically, we describe an image processing pipeline that allows for object and face localization in cluttered environments as well as various contrast enhancement strategies in the “implanted image.” Finally, we describe a real-time implementation and deployment of this system on the Argus II platform. We believe that these advances can significantly improve the effectiveness of the next generation of retinal prostheses.


Advances in Anatomy Embryology and Cell Biology | 2016

Bioimage Informatics for Big Data.

Hanchuan Peng; Jie Zhou; Zhi Zhou; Alessandro Bria; Yujie Li; Dean M. Kleissas; Nathan G. Drenkow; Brian Long; Xiaoxiao Liu; Hanbo Chen

Bioimage informatics is a field wherein high-throughput image informatics methods are used to solve challenging scientific problems related to biology and medicine. When the image datasets become larger and more complicated, many conventional image analysis approaches are no longer applicable. Here, we discuss two critical challenges of large-scale bioimage informatics applications, namely, data accessibility and adaptive data analysis. We highlight case studies to show that these challenges can be tackled based on distributed image computing as well as machine learning of image examples in a multidimensional environment.


Nature Methods | 2018

A community-developed open-source computational ecosystem for big neuro data

Joshua T. Vogelstein; Eric S. Perlman; Benjamin Falk; Alex Baden; William Gray Roncal; Vikram Chandrashekhar; Forrest Collman; Sharmishtaa Seshamani; Jesse L. Patsolic; Kunal Lillaney; Michael M. Kazhdan; Robert Hider; Derek Pryor; Jordan Matelsky; Timothy Gion; Priya Manavalan; Brock A. Wester; Mark A. Chevillet; Eric T. Trautman; Khaled Khairy; Eric Bridgeford; Dean M. Kleissas; Daniel J. Tward; Ailey K. Crow; Brian Hsueh; Matthew Wright; Michael I. Miller; Stephen J. Smith; R. Jacob Vogelstein; Karl Deisseroth

Big imaging data is becoming more prominent in brain sciences across spatiotemporal scales and phylogenies. We have developed a computational ecosystem that enables storage, visualization, and analysis of these data in the cloud, thusfar spanning 20+ publications and 100+ terabytes including nanoscale ultrastructure, microscale synaptogenetic diversity, and mesoscale whole brain connectivity, making NeuroData the largest and most diverse open repository of brain data.


bioRxiv | 2017

The Block Object Storage Service (bossDB): A Cloud-Native Approach for Petascale Neuroscience Discovery

Dean M. Kleissas; Robert Hider; Derek Pryor; Timothy Gion; Priya Manavalan; Jordan Matelsky; Alex Baden; Kunal Lillaney; Randal C. Burns; Denise D'Angelo; William Gray Roncal; Brock A. Wester

Large volumetric neuroimaging datasets have grown in size over the past ten years from gigabytes to terabytes, with petascale data becoming available and more common over the next few years. Current approaches to store and analyze these emerging datasets are insuffcient in their ability to scale in both cost-effectiveness and performance. Additionally, enabling large-scale processing and annotation is critical as these data grow too large for manual inspection. We propose a new cloud-native managed service for large and multi-modal experiments, providing support for data ingest, storage, visualization, and sharing through a RESTful Application Programming Interface (API) and web-based user interface. Our project is open source and can be easily and costeffectively used for a variety of modalities and applications.


british machine vision conference | 2015

VESICLE: Volumetric Evaluation of Synaptic Inferfaces using Computer Vision at Large Scale.

William Gray Roncal; Michael Pekala; Verena Kaynig-Fittkau; Dean M. Kleissas; Joshua T. Vogelstein; Hanspeter Pfister; Randal C. Burns; R. Jacob Vogelstein; Mark A. Chevillet; Gregory D. Hager

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Mark A. Chevillet

Johns Hopkins University Applied Physics Laboratory

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Kunal Lillaney

Johns Hopkins University

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