{"title":"利用神经网络早期预测肺炎球菌疾病:尼日利亚邦尼岛案例研究","authors":"Fiberesima Alalibo Ralph, Ogunnusi, Samuel.O, Pronen Innocent","doi":"10.18535/ijecs/v13i06.4828","DOIUrl":null,"url":null,"abstract":"Pneumococcal disease, caused by Streptococcus pneumoniae, poses a significant health challenge, particularly in resource-limited settings like Bonny Island, Nigeria. This study employs neural networks and artificial intelligence to predict pneumococcal disease, addressing the critical need for early diagnosis and intervention. Methodologically, the research encompasses data collection, cleaning, correlation analysis, and model development, ensuring a robust system for early disease prediction. By analyzing demographic, clinical, and environmental factors, the study identifies significant predictors of pneumococcal disease risk. In comparison with Random Forest and Support Vector Machines trained on the same data, the neural network achieved 100 percent accuracy, recall, precision, and f1 scores. The integration of the neural network model into a web application facilitates real-time predictions, enabling healthcare providers to input symptoms and receive immediate diagnostic insights. This approach enhances timely interventions, potentially reducing morbidity and mortality associated with pneumococcal disease. Despite challenges like data quality and integration, the findings demonstrate the efficacy of AI-driven models in improving public health outcomes. The deployment of such models in Bonny Island underscores their practicality and scalability, paving the way for broader applications in similar contexts. Ultimately, this study not only advances understanding of pneumococcal disease epidemiology in Bonny Island but also contributes to global efforts in enhancing healthcare delivery through innovative technological solutions. Future research should focus on continuous model refinement and validation with larger datasets to further improve accuracy and reliability.","PeriodicalId":231371,"journal":{"name":"International Journal of Engineering and Computer Science","volume":"30 2‐3","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-06-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Utilizing Neural Networks for Early Prediction of Pneumococcal Disease: A Case Study in Bonny Island, Nigeria\",\"authors\":\"Fiberesima Alalibo Ralph, Ogunnusi, Samuel.O, Pronen Innocent\",\"doi\":\"10.18535/ijecs/v13i06.4828\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Pneumococcal disease, caused by Streptococcus pneumoniae, poses a significant health challenge, particularly in resource-limited settings like Bonny Island, Nigeria. 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Despite challenges like data quality and integration, the findings demonstrate the efficacy of AI-driven models in improving public health outcomes. The deployment of such models in Bonny Island underscores their practicality and scalability, paving the way for broader applications in similar contexts. Ultimately, this study not only advances understanding of pneumococcal disease epidemiology in Bonny Island but also contributes to global efforts in enhancing healthcare delivery through innovative technological solutions. 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引用次数: 0
摘要
由肺炎链球菌引起的肺炎球菌疾病是一项重大的健康挑战,尤其是在尼日利亚邦尼岛等资源有限的地区。本研究利用神经网络和人工智能预测肺炎球菌疾病,以满足早期诊断和干预的迫切需要。在方法上,研究包括数据收集、清理、相关性分析和模型开发,以确保建立一个强大的早期疾病预测系统。通过分析人口、临床和环境因素,该研究确定了肺炎球菌疾病风险的重要预测因素。与在相同数据上训练的随机森林和支持向量机相比,神经网络的准确率、召回率、精确度和 f1 分数均达到了 100%。将神经网络模型集成到网络应用程序中有助于进行实时预测,使医疗服务提供者能够输入症状并立即获得诊断意见。这种方法可以加强及时干预,从而降低与肺炎球菌疾病相关的发病率和死亡率。尽管存在数据质量和整合等挑战,但研究结果证明了人工智能驱动的模型在改善公共卫生成果方面的功效。在邦尼岛部署此类模型凸显了其实用性和可扩展性,为在类似环境中更广泛的应用铺平了道路。最终,这项研究不仅加深了人们对邦尼岛肺炎球菌疾病流行病学的了解,还有助于全球通过创新技术解决方案来改善医疗保健服务的努力。未来的研究应侧重于利用更大的数据集不断完善和验证模型,以进一步提高准确性和可靠性。
Utilizing Neural Networks for Early Prediction of Pneumococcal Disease: A Case Study in Bonny Island, Nigeria
Pneumococcal disease, caused by Streptococcus pneumoniae, poses a significant health challenge, particularly in resource-limited settings like Bonny Island, Nigeria. This study employs neural networks and artificial intelligence to predict pneumococcal disease, addressing the critical need for early diagnosis and intervention. Methodologically, the research encompasses data collection, cleaning, correlation analysis, and model development, ensuring a robust system for early disease prediction. By analyzing demographic, clinical, and environmental factors, the study identifies significant predictors of pneumococcal disease risk. In comparison with Random Forest and Support Vector Machines trained on the same data, the neural network achieved 100 percent accuracy, recall, precision, and f1 scores. The integration of the neural network model into a web application facilitates real-time predictions, enabling healthcare providers to input symptoms and receive immediate diagnostic insights. This approach enhances timely interventions, potentially reducing morbidity and mortality associated with pneumococcal disease. Despite challenges like data quality and integration, the findings demonstrate the efficacy of AI-driven models in improving public health outcomes. The deployment of such models in Bonny Island underscores their practicality and scalability, paving the way for broader applications in similar contexts. Ultimately, this study not only advances understanding of pneumococcal disease epidemiology in Bonny Island but also contributes to global efforts in enhancing healthcare delivery through innovative technological solutions. Future research should focus on continuous model refinement and validation with larger datasets to further improve accuracy and reliability.