April 1, 2011
Book Chapter

Predicting Individual Affect of Health Interventions to Reduce HPV Prevalence

Abstract

Recently, human papilloma virus has been implicated to cause several throat and oral cancers and hpv is established to cause most cervical cancers. A human papilloma virus vaccine has been proven successful to reduce infection incidence in FDA clinical trials and it is currently available in the United States. Current intervention policy targets adolescent females for vaccination; however, the expansion of suggested guidelines may extend to other age groups and males as well. This research takes a first step towards automatically predicting personal beliefs, regarding health intervention, on the spread of disease. Using linguistic or statistical approaches, sentiment analysis determines a texts affective content. Self-reported HPV vaccination beliefs published in web and social media are analyzed for affect polarity and leveraged as knowledge inputs to epidemic models. With this in mind, we have developed a discrete-time model to facilitate predicting impact on the reduction of HPV prevalence due to arbitrary age and gender targeted vaccination schemes.

Revised: August 24, 2011 | Published: April 1, 2011

Citation

Corley C.D., R. Mihalcea, A.R. Mikler, and A.P. Sanfilippo. 2011. Predicting Individual Affect of Health Interventions to Reduce HPV Prevalence. In Software Tools and Algorithms for Biological Systems: Advances in Experimental Medicine and Biology, edited by HRR Arabnia and Q-N Tran. 181-190. New York:Springer. PNNL-SA-69222.