A Different Traditional Approach for Automatic Comparative Machine Learning in Multimodality Covid-۱۹ Severity Recognition

سال انتشار: 1402
نوع سند: مقاله ژورنالی
زبان: انگلیسی
مشاهده: 201

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شناسه ملی سند علمی:

JR_IJIEN-3-1_001

تاریخ نمایه سازی: 28 خرداد 1402

چکیده مقاله:

In March ۲۰۲۰, the world health organization introduced a new infectious pandemic called “novel coronavirus disease” or “Covid-۱۹”, origin dates back to World War II (۱۹۳۹) and spread from the city of Wuhan in China (۲۰۱۹). The severity of the outbreak affected the health of abundant folk worldwide. This bred the emergence of unimodal artificial intelligence approaches in the diagnosis of coronavirus disease but solely led to a significant percentage of false-negative results. In this paper, we combined ۲۵۰۰ Covid-۱۹ multimodal data based on Early Fusion Type-I (EFT۱) architecture as a severity recognition model for the classification task. We designed and implemented one-step systems of automatic comparative machine learning (AutoCML) and automatic comparative machine learning based on important feature selection (AutoIFSCML). We utilized our posed assessment method called “Descended Composite Scores Average (DCSA)”. In AutoCML, Extreme Gradient Boost (DCSA=۰.۹۹۸) and in AutoIFSCML, Random Forest (DCSA=۰.۹۶۰) demonstrated the best performance for multimodality Covid-۱۹ severity recognition while ۷۰% of the characteristics with high DCSA were chosen by the internal important features selection system (AutoIFS) to enter the AutoCML system. The DCSA-based designed systems can be useful in implementing fine-tuned machine learning models in medical processes by leveraging the capacities and performances of the model in all methods. As well as, ensemble learning made sounds good among evaluated traditional models in systems.

نویسندگان

Mohammadreza Saraei

Biomedical Engineering Faculty, Seraj Higher Education Institute, Tabriz, Iran

Saba Rahmani

Biomedical Engineering Faculty, Seraj Higher Education Institute, Tabriz, Iran

Saman Rajebi

Assistant Professor, Electrical Engineering Faculty, Seraj Higher Education Institute, Tabriz, Iran

Sebelan Danishvar

Research Fellow, College of Engineering, Design, and Physical Sciences, Brunel University, London, UK