Forecasting Rare Disease Outbreaks with Spatio-temporal Topic Models
نویسندگان
چکیده
Rapidly increasing volumes of news, tweets, and blogs are proving to be extremely valuable resources in helping anticipate, detect, and forecast significant societal events. In this paper, we focus on the problem of forecasting rare disease outbreaks and demonstrate how spatio-temporal topic models over health-related newspaper articles can successfully be used to forecast outbreaks. More precisely, we present a novel framework that integrates topic models with one-class SVMs, so that modeling the underlying topic evolution and forecasting its prominence can be used as a surrogate for making near-term predictions of disease outbreaks. We demonstrate the effectiveness of our proposed technique using incidence data for Hantavirus in multiple countries of Latin America.
منابع مشابه
SourceSeer: Forecasting Rare Disease Outbreaks Using Multiple Data Sources
Rapidly increasing volumes of news feeds from diverse data sources, such as online newspapers, Twitter and online blogs are proving to be extremely valuable resources in helping anticipate, detect, and forecast outbreaks of rare diseases. This paper presents SourceSeer, a novel algorithmic framework that combines spatio-temporal topic models with sourcebased anomaly detection techniques to effe...
متن کاملAssessment of Neonate's Congenital Hypothyroidism Pattern Using Poisson Spatio-temporal Model in Disease Mapping under the Bayesian Paradigm during 2011-18 in Guilan, Iran
Background: Congenital Hypothyroidism (CH) is one of the reasons for mental retardation and defective growth in neonates. It can be treated if it is diagnosed early. The congenital hypothyroidism can be diagnosed using newborn screening in the first days after birth. Disease mapping helps to identify high-risk areas of the disease. This study aimed to evaluate the pattern of CH using the Poisso...
متن کاملSpatio-temporal agent based simulation of COVID-19 disease and investigating the effect of vaccination (case study: Urmia)
Proper management of epidemic diseases such as Covid-19 is very important because of its effects on the economy, culture and society of nations. By applying various control strategies such as closing schools, restricting night traffic and mass vaccination program, the spread of this disease has been somewhat controlled but not completely stopped. The main goal of this research is to provide a f...
متن کاملSpatio-temporal analysis of infectious disease outbreaks in veterinary medicine: clusters, hotspots and foci.
Analysis of disease data that has an implicit spatio-temporal component (such as disease outbreaks, data generated by surveillance systems and specific hypothesis-based veterinary field research) is a foundation of veterinary epidemiology and preventive medicine. Components of this process include exploratory spatial data analysis (finding interesting patterns), visualisation (showing interesti...
متن کاملمعرفی شبکه های عصبی پیمانه ای عمیق با ساختار فضایی-زمانی دوگانه جهت بهبود بازشناسی گفتار پیوسته فارسی
In this article, growable deep modular neural networks for continuous speech recognition are introduced. These networks can be grown to implement the spatio-temporal information of the frame sequences at their input layer as well as their labels at the output layer at the same time. The trained neural network with such double spatio-temporal association structure can learn the phonetic sequence...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2013