Asadur Chowdury
Overview
Explore the profile of Asadur Chowdury including associated specialties, affiliations and a list of published articles.
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Articles
32
Citations
165
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0
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Recent Articles
1.
Lyu Y, Harake S, Chowdury A, Banerjee S, Gologorsky R, Liu S, et al.
Res Sq
. 2025 Feb;
PMID: 39975915
Neuroimaging is a ubiquitous tool for evaluating patients with neurological diseases. The global demand for magnetic resonance imaging (MRI) studies has risen steadily, placing significant strain on health systems, prolonging...
2.
Reinecke D, Maarouf N, Smith A, Alber D, Markert J, Goff N, et al.
Neuro Oncol
. 2024 Dec;
PMID: 39673805
Background: Accurate intraoperative diagnosis is crucial for differentiating between primary CNS lymphoma (PCNSL) and other CNS entities, guiding surgical decision-making, but represents significant challenges due to overlapping histomorphological features, time...
3.
Kondepudi A, Pekmezci M, Hou X, Scotford K, Jiang C, Rao A, et al.
Nature
. 2024 Nov;
637(8045):439-445.
PMID: 39537921
A critical challenge in glioma treatment is detecting tumour infiltration during surgery to achieve safe maximal resection. Unfortunately, safely resectable residual tumour is found in the majority of patients with...
4.
Jiang C, Gedeon A, Lyu Y, Landgraf E, Zhang Y, Hou X, et al.
Conf Comput Vis Pattern Recognit Workshops
. 2024 Oct;
2024:6966-6977.
PMID: 39355755
Volumetric biomedical microscopy has the potential to increase the diagnostic information extracted from clinical tissue specimens and improve the diagnostic accuracy of both human pathologists and computational pathology models. Unfortunately,...
5.
Martin E, Chowdury A, Kopchick J, Thomas P, Khatib D, Rajan U, et al.
Front Psychiatry
. 2024 Oct;
15:1337882.
PMID: 39355381
Introduction: Schizophrenia is characterized by a loss of network features between cognition and reward sub-circuits (notably involving the mesolimbic system), and this loss may explain deficits in learning and cognition....
6.
Reinecke D, Maroouf N, Smith A, Alber D, Markert J, Goff N, et al.
medRxiv
. 2024 Sep;
PMID: 39252932
Accurate intraoperative diagnosis is crucial for differentiating between primary CNS lymphoma (PCNSL) and other CNS entities, guiding surgical decision-making, but represents significant challenges due to overlapping histomorphological features, time constraints,...
7.
Fiorito A, Blasi G, Brunelin J, Chowdury A, Diwadkar V, Goghari V, et al.
Schizophrenia (Heidelb)
. 2024 Mar;
10(1):38.
PMID: 38503766
Schizophrenia is characterized by the misattribution of emotional significance to neutral faces, accompanied by overactivations of the limbic system. To understand the disorder's genetic and environmental contributors, investigating healthy first-degree...
8.
Samona E, Chowdury A, Kopchick J, Thomas P, Rajan U, Khatib D, et al.
Psychiatry Res Neuroimaging
. 2024 Mar;
340:111805.
PMID: 38447230
Altered brain network profiles in schizophrenia (SCZ) during memory consolidation are typically observed during task-active periods such as encoding or retrieval. However active processes are also sub served by covert...
9.
Catanzaro M, Rizzo S, Kopchick J, Chowdury A, Rosenberg D, Bubenik P, et al.
Neuroinformatics
. 2023 Nov;
22(1):45-62.
PMID: 37924429
BOLD-based fMRI is the most widely used method for studying brain function. The BOLD signal while valuable, is beset with unique vulnerabilities. The most notable of these is the modest...
10.
Jiang C, Hou X, Kondepudi A, Chowdury A, Freudiger C, Orringer D, et al.
Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit
. 2023 Sep;
2023:19798-19808.
PMID: 37654477
Learning high-quality, self-supervised, visual representations is essential to advance the role of computer vision in biomedical microscopy and clinical medicine. Previous work has focused on self-supervised representation learning (SSL) methods...