Early Detection of Post-COVID-19 Fatigue Syndrome Using Deep Learning Models
Fadhil G. Al-Amran, Salman Rawaf, Maitham G. Yousif

TL;DR
This study develops deep learning models trained on clinical and demographic data from 940 patients to enable early detection of Post-COVID-19 Fatigue Syndrome, aiming to improve timely healthcare interventions.
Contribution
It introduces a novel application of deep learning for early diagnosis of PCFS using a large, diverse patient dataset from Iraq, enhancing healthcare response to COVID-19 complications.
Findings
Deep learning models achieved high accuracy in detecting PCFS.
Early detection can lead to better patient management.
Models demonstrated robustness across different age groups.
Abstract
The research titled "Early Detection of Post-COVID-19 Fatigue Syndrome using Deep Learning Models" addresses a pressing concern arising from the COVID-19 pandemic. Post-COVID-19 Fatigue Syndrome (PCFS) has become a significant health issue affecting individuals who have recovered from COVID-19 infection. This study harnesses a robust dataset comprising 940 patients from diverse age groups, whose medical records were collected from various hospitals in Iraq over the years 2022, 2022, and 2023. The primary objective of this research is to develop and evaluate deep learning models for the early detection of PCFS. Leveraging the power of deep learning, these models are trained on a comprehensive set of clinical and demographic features extracted from the dataset. The goal is to enable timely identification of PCFS symptoms in post-COVID-19 patients, which can lead to more effective…
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Taxonomy
TopicsLong-Term Effects of COVID-19
