Automated Detection and Classification of Necrotizing Fasciitis in Patient Affected Area Images using YOLO v9

Shenbaga Priya, V and Saranya, S and Manikandan, D and Balammal, V. and Pr, Shreeram and Ravindran, Sindhu (2025) Automated Detection and Classification of Necrotizing Fasciitis in Patient Affected Area Images using YOLO v9. IEEE Explorer. pp. 1-7.

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Abstract

Necrotizing fasciitis is often regarded as a clinical and surgical emergency characterized by rapid onset, swift progression, and a significant mortality rate. Often because of atypical clinical presentation, the disease evades early diagnosis and subjectively gives way to delayed treatment with an increased risk for severe complications from septic shock and multi-organ failure. This study looks into the possible use of a deep learning model utilizing YOLO v9, which automatically detects NF in images of the affected areas of the patient’s body obtained from patients suspected to be infected. Analysis of annotated images dataset, therefore, is primarily targeted at early improvement in detection accuracy with a view to facilitating prompt diagnosis and treatment. Results thus obtained indicate a model boosting the diagnostic precision which would eventually decrease morbidity and mortality rates on matters related to necrotizing fasciitis.

Item Type: Article
Subjects: Computer Science Engineering > Deep Learning
Computer Science Engineering > Machine Learning
Domains: Computer Science Engineering
Depositing User: Mr IR Admin
Last Modified: 18 May 2026 05:59
URI: https://ir.vistas.ac.in/id/eprint/19636

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