Gupta Gaurav, Khan Shakir, Guleria Vandana, Almjally Abrar, Alabduallah Bayan Ibrahimm, Siddiqui Tamanna, Albahlal Bader M, Alajlan Saad Abdullah, Al-Subaie Mashael
Yogananda School of AI, Computers and Data Sciences, Shoolini University, Solan 173229, India.
College of Computer and Information Sciences, Imam Mohammad Ibn Saud Islamic University (IMSIU), Riyadh 11564, Saudi Arabia.
Diagnostics (Basel). 2023 Mar 14;13(6):1093. doi: 10.3390/diagnostics13061093.
The aedes mosquito-borne dengue viruses cause dengue fever, an arboviral disease (DENVs). In 2019, the World Health Organization forecasts a yearly occurrence of infections from 100 million to 400 million, the maximum number of dengue cases ever testified worldwide, prompting WHO to label the virus one of the world's top ten public health risks. Dengue hemorrhagic fever can progress into dengue shock syndrome, which can be fatal. Dengue hemorrhagic fever can also advance into dengue shock syndrome. To provide accessible and timely supportive care and therapy, it is necessary to have indispensable practical instruments that accurately differentiate Dengue and its subcategories in the early stages of illness development. Dengue fever can be predicted in advance, saving one's life by warning them to seek proper diagnosis and treatment. Predicting infectious diseases such as dengue is difficult, and most forecast systems are still in their primary stages. In developing dengue predictive models, data from microarrays and RNA-Seq have been used significantly. Bayesian inferences and support vector machine algorithms are two examples of statistical methods that can mine opinions and analyze sentiment from text. In general, these methods are not very strong semantically, and they only work effectively when the text passage inputs are at the level of the page or the paragraph; they are poor miners of sentiment at the level of the sentence or the phrase. In this research, we propose to construct a machine learning method to forecast dengue fever.
伊蚊传播的登革病毒会引发登革热,这是一种虫媒病毒病(DENVs)。2019年,世界卫生组织预测每年感染病例数在1亿至4亿之间,这是全球有记录以来登革热病例的最大数量,促使世卫组织将该病毒列为世界十大公共卫生风险之一。登革出血热可能会发展为登革休克综合征,这可能是致命的。登革出血热也可能进展为登革休克综合征。为了提供可及且及时的支持性护理和治疗,有必要拥有不可或缺的实用工具,以便在疾病发展的早期阶段准确区分登革热及其亚型。登革热可以提前预测,通过提醒人们寻求正确的诊断和治疗来挽救生命。预测登革热等传染病很困难,而且大多数预测系统仍处于初级阶段。在开发登革热预测模型时,来自微阵列和RNA测序的数据被大量使用。贝叶斯推理和支持向量机算法是两种可以从文本中挖掘观点并分析情感的统计方法的例子。一般来说,这些方法在语义上不是很强,并且只有当文本段落输入处于页面或段落级别时才有效;它们在句子或短语级别上对情感的挖掘能力较差。在本研究中,我们提议构建一种机器学习方法来预测登革热。