Multithreshold Segmentation and Machine Learning Based Approach to Differentiate COVID-19 from Viral Pneumonia
Shaik Mahaboob Basha,Aloisio Vieira Lira Neto,Samah Alshathri,Mohamed Abd Elaziz,Shaik Hashmitha Mohisin,Victor Hugo C. de Albuquerque +5 more
TL;DR: The main objective is to probe a simple threshold-based segmentation approach to identify possible infection regions in CXR images and investigate intensity-based, wavelet transform (WT)-based, and Laws based texture features with statistical measures.
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Abstract: Coronavirus disease (COVID-19) has created an unprecedented devastation and the loss of millions of lives globally. Contagious nature and fatalities invariably pose challenges to physicians and healthcare support systems. Clinical diagnostic evaluation using reverse transcription-polymerase chain reaction and other approaches are currently in use. The Chest X-ray (CXR) and CT images were effectively utilized in screening purposes that could provide relevant data on localized regions affected by the infection. A step towards automated screening and diagnosis using CXR and CT could be of considerable importance in these turbulent times. The main objective is to probe a simple threshold-based segmentation approach to identify possible infection regions in CXR images and investigate intensity-based, wavelet transform (WT)-based, and Laws based texture features with statistical measures. Further feature selection strategy using Random Forest (RF) then selected features used to create Machine Learning (ML) representation with Support Vector Machine (SVM) and a Random Forest (RF) to make different COVID-19 from viral pneumonia (VP). The results obtained clearly indicate that the intensity and WT-based features vary in the two pathologies that are better differentiated with the combined features trained using SVM and RF classifiers. Classifier performance measures like an Area Under the Curve (AUC) of 0.97 and by and large classification accuracy of 0.9 using the RF model clearly indicate that the methodology implemented is useful in characterizing COVID-19 and Viral Pneumonia.
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Citations
Robust Machine Learning Technique to Classify COVID-19 Using Fusion of Texture and Vesselness of X-Ray Images
Shaik Mahaboob Basha,Victor Hugo C. de Albuquerque,Samia Allaoua Chelloug,Mohamed Abd Elaziz,Shaik Hashmitha Mohisin,Suhail Parvaze Pathan +5 more
TL;DR: A robust machine learning technique is proposed to classify COVID-19 using fusion of texture and vesselness features from X-ray images, achieving 91.8% accuracy with Random Forest-based classifier and 97% true positive rate for COVID-19 diagnosis.
4
Automatic COVID-19 and Common-Acquired Pneumonia Diagnosis Using Chest CT Scans
P. C. Motta,Paulo Cortez,Bruno Riccelli Silva,Guang Yang,Victor Hugo C. de Albuquerque +4 more
TL;DR: In this article , a secure Computer-Aided Diagnostic system that can assist in identifying COVID-19 and determining the necessary level of care is presented. But the system is not suitable for the Intensive Care Unit to monitor disease progression or regression in the fight against this epidemic.
3
Prediction of viral pneumonia based on machine learning models analyzing pulmonary inflammation index scores.
Yong Wang,Zong-Lin Liu,Hai Yang,Run Li,Si-Jing Liao,Yao Huang,Ming-Hui Peng,Xiao Liu,Guang-Yan Si,Qi-Zhou He,Ying Zhang +10 more
TL;DR: Machine learning models are valuable in assessing the risk and severity of viral pneumonia and confirm the importance in predicting the severity of viral pneumonia through PII.
2
Multi-class classification of COVID-19 and other infections using machine learning model with wavelet and laws features
Shaik Mahaboob Basha,Aloísio Vieira Lira Neto,Mohamed Abd Elaziz,Shaik Hashmitha Mohisin,Victor Hugo C. de Albuquerque +4 more
TL;DR: Multi-class classification of COVID-19 and other infections using machine learning model with wavelet and laws features aims to classify CXR images into COVID-19, viral-pneumonia and lung opacity based on individual or combined features extracted from WT and Laws features.
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