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Artificial-intelligence-based molecular classification of diffuse gliomas using rapid, label-free optical imaging

Authors :
Hollon, Todd C.
Jiang, Cheng
Chowdury, Asadur
Nasir-Moin, Mustafa
Kondepudi, Akhil
Aabedi, Alexander
Adapa, Arjun
Al-Holou, Wajd
Heth, Jason
Sagher, Oren
Lowenstein, Pedro
Castro, Maria
Wadiura, Lisa Irina
Widhalm, Georg
Neuschmelting, Volker
Reinecke, David
von Spreckelsen, Niklas
Berger, Mitchel S.
Hervey-Jumper, Shawn L.
Golfinos, John G.
Snuderl, Matija
Camelo-Piragua, Sandra
Freudiger, Christian
Lee, Honglak
Orringer, Daniel A.
Publication Year :
2023

Abstract

Molecular classification has transformed the management of brain tumors by enabling more accurate prognostication and personalized treatment. However, timely molecular diagnostic testing for patients with brain tumors is limited, complicating surgical and adjuvant treatment and obstructing clinical trial enrollment. In this study, we developed DeepGlioma, a rapid ($< 90$ seconds), artificial-intelligence-based diagnostic screening system to streamline the molecular diagnosis of diffuse gliomas. DeepGlioma is trained using a multimodal dataset that includes stimulated Raman histology (SRH); a rapid, label-free, non-consumptive, optical imaging method; and large-scale, public genomic data. In a prospective, multicenter, international testing cohort of patients with diffuse glioma ($n=153$) who underwent real-time SRH imaging, we demonstrate that DeepGlioma can predict the molecular alterations used by the World Health Organization to define the adult-type diffuse glioma taxonomy (IDH mutation, 1p19q co-deletion and ATRX mutation), achieving a mean molecular classification accuracy of $93.3\pm 1.6\%$. Our results represent how artificial intelligence and optical histology can be used to provide a rapid and scalable adjunct to wet lab methods for the molecular screening of patients with diffuse glioma.<br />Comment: Paper published in Nature Medicine

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2303.13610
Document Type :
Working Paper
Full Text :
https://doi.org/10.1038/s41591-023-02252-4