Computer Science School, Canadian International College (CIC), Cairo, Egypt.
Scientific Research Group in Egypt (SRGE),.
Sci Rep. 2023 May 22;13(1):8268. doi: 10.1038/s41598-023-34489-x.
The use of metal phosphides, particularly aluminum phosphide, poses a significant threat to human safety and results in high mortality rates. This study aimed to determine mortality patterns and predictive factors for acute zinc and aluminum phosphide poisoning cases that were admitted to Menoufia University Poison and Dependence Control Center from 2017 to 2021. Statistical analysis revealed that poisoning was more common among females (59.7%), aged between 10 and 20 years, and from rural regions. Most cases were students, and most poisonings were the result of suicidal intentions (78.6%). A new hybrid model named Bayesian Optimization-Relevance Vector Machine (BO-RVM) was proposed to forecast fatal poisoning. The model achieved an overall accuracy of 97%, with high positive predictive value (PPV) and negative predictive value (NPV) values of 100% and 96%, respectively. The sensitivity was 89.3%, while the specificity was 100%. The F1 score was 94.3%, indicating a good balance between precision and recall. These results suggest that the model performs well in identifying both positive and negative cases. Additionally, the BO-RVM model has a fast and accurate processing time of 379.9595 s, making it a promising tool for various applications. The study underscores the need for public health policies to restrict the availability and use of phosphides in Egypt and adopt effective treatment methods for phosphide-poisoned patients. Clinical suspicion, positive silver nitrate test for phosphine, and analysis of cholinesterase levels are useful in diagnosing metal phosphide poisoning, which can cause various symptoms.
金属磷化物的使用,尤其是磷化铝,对人体安全构成重大威胁,导致高死亡率。本研究旨在确定 2017 年至 2021 年期间,来自米努菲亚大学毒瘾和依赖控制中心的急性锌和铝磷化氢中毒病例的死亡率模式和预测因素。统计分析表明,中毒在女性(59.7%)、10 至 20 岁和农村地区更为常见。大多数病例是学生,大多数中毒是自杀意图的结果(78.6%)。提出了一种名为贝叶斯优化-相关向量机(BO-RVM)的新混合模型来预测致命中毒。该模型的整体准确率为 97%,具有 100%的高阳性预测值(PPV)和 96%的阴性预测值(NPV)。灵敏度为 89.3%,特异性为 100%。F1 得分为 94.3%,表明精度和召回率之间有很好的平衡。这些结果表明,该模型在识别阳性和阴性病例方面表现良好。此外,BO-RVM 模型的处理时间快速且准确,为 379.9595 秒,是各种应用的有前途的工具。该研究强调需要制定公共卫生政策,限制埃及金属磷化物的供应和使用,并为磷化氢中毒患者采用有效的治疗方法。临床怀疑、对磷化氢的硝酸银阳性测试以及胆碱酯酶水平的分析有助于诊断金属磷化物中毒,后者可引起各种症状。