Title :
Medical prognosis based on patient similarity and expert feedback
Author :
Fei Wang ; Jianying Hu ; Jimeng Sun
Abstract :
Prognosis refers to the prediction of the future health status of a patient. Providing prognostic insight to clinicians is critical for physician decision support. In this paper we present a collaborative disease prognosis strategy leveraging the information of the clinically similar patient cohort, using a Local Spline Regression (LSR) based similarity measure. To improve the reliability of the approach, the algorithm can also incorporate physician´s feedback in the form of whether the patients in a retrieved cohort are indeed similar to the query patient. The proposed methodology was tested on a real clinical data set containing records of over two hundred thousand patients over three years. We report the retrieval as well as prognosis performance to demonstrate the effectiveness of the system.
Keywords :
decision support systems; diseases; medical information systems; patient diagnosis; query processing; regression analysis; splines (mathematics); LSR based patient similarity measure; clinical data set; cohort; collaborative disease prognosis strategy; electronic medical record; expert feedback; health information retrieval; local spline regression; medical prognosis; patient health status prediction; physician decision support; query patient; reliability; Diseases; Euclidean distance; Medical diagnostic imaging; Splines (mathematics); Testing; Vectors;
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Conference_Location :
Tsukuba
Print_ISBN :
978-1-4673-2216-4