Neglected tropical diseases (NTDs) continue to affect the livelihood of individuals in countries in the Southeast Asia and Western Pacific region. These diseases have been long existing and have caused devastating health problems and economic decline to people in low- and middle-income (developing) countries. An estimated 1.7 billion of the world's population suffer one or more NTDs annually, this puts approximately one in five individuals at risk for NTDs. In addition to health and social impact, NTDs inflict significant financial burden to patients, close relatives, and are responsible for billions of dollars lost in revenue from reduced labor productivity in developing countries alone. There is an urgent need to better improve the control and eradication or elimination efforts towards NTDs. This can be achieved by utilizing machine learning tools to better the surveillance, prediction and detection program, and combat NTDs through the discovery of new therapeutics against these pathogens. This review surveys the current application of machine learning tools for NTDs and the challenges to elevate the state-of-the-art of NTDs surveillance, management, and treatment.
翻译:东南亚和西太平洋区域国家的个人生计继续受到被忽视热带疾病(NTDs)的影响,这些疾病长期存在,给中低收入国家(发展中国家)的人民造成了毁灭性的健康问题和经济衰退。估计世界人口中有17亿人每年遭受一次或多次NTDs,这使大约五分之一的人面临NTDs的风险。除了健康和社会影响外,NTDs还给病人和近亲带来巨大的财政负担,并造成数十亿美元的收入损失,仅发展中国家就因劳动生产率下降而损失。现在迫切需要改进对NTDs的控制、根除或消除工作。这可以通过利用机器学习工具来改进监控、预测和检测方案,并通过发现新的治疗方法来防治NTDs病原体,来实现这一目标。本审查调查目前对NTDs采用机器学习工具的情况,以及提高NTDs监测、管理和治疗的先进水平的挑战。