2021
DOI: 10.1155/2021/8668978
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Septicemic Melioidosis Detection Using Support Vector Machine with Five Immune Cell Types

Abstract: Melioidosis, caused by Burkholderia pseudomallei (B. pseudomallei), predominantly occurs in the tropical regions. Of various types of melioidosis, septicemic melioidosis is the most lethal one with a mortality rate of 40%. Early detection of the disease is paramount for the better chances of cure. In this study, we developed a novel approach for septicemic melioidosis detection, using a machine learning technique—support vector machine (SVM). Several SVM models were built, and 19 features characterized by the … Show more

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“…Xu et al (2021) developed a SVM-based model tasked in detecting clinical septicemic melioidosis infection. Obtaining their data from the human peripheral blood microarray dataset, as many as 69 patients with septicemic melioidosis and a mix total of 175 non-septicemic melioidosis (healthy, type2 diabetes, recovered from melioidosis, and septicemic from other organism) were used to train the SVM-based detection model.…”
mentioning
confidence: 99%
“…Xu et al (2021) developed a SVM-based model tasked in detecting clinical septicemic melioidosis infection. Obtaining their data from the human peripheral blood microarray dataset, as many as 69 patients with septicemic melioidosis and a mix total of 175 non-septicemic melioidosis (healthy, type2 diabetes, recovered from melioidosis, and septicemic from other organism) were used to train the SVM-based detection model.…”
mentioning
confidence: 99%