? ? Medical decision support tools are increasingly available on the Internet and are being used by lay persons as well as health care professionals. The goal of some of these tools is to provide an """"""""individualized"""""""" prediction of future health care related events such as prognosis in breast cancer given specific information about the individual. These tools are usually based on models synthesized from data with a fine granularity of information. Under the umbrella of """"""""personalized"""""""" medicine, these individualized prognostic assessments are sought as a means to replace general prognostic information given to patients with specific probability estimates that pertain to a small stratum to which the patient belongs, and ultimately specifically to each patient (i.e., a stratum with n=1). Subsequently, these estimates are used to inform decision making and are therefore of critical importance for public health. ? Responsible utilization of prognostic models for patient counseling and medical decision making requires thorough model validation. Verification that the estimated or predicted event probabilities reflect the underlying true probability for a particular individual (i.e., verifying the calibration of the prognostic model) is a critical but often overlooked step in evaluation, which usually favors the verification of the discriminatory ability of the model. Selection of the best predictive model for a given problem should be based on robust comparison that takes into account errors in individual predictions, calibration, and discrimination indices. A robust test for comparison of calibration across different models does not currently exist. ? Our specific aims are to: (1) Characterize the main deficiencies of existing calibration indices in the context of individualized predictions and develop a new model-independent calibration index and comparison test that can be used to assess and compare predictive models based on both statistical regression and machine earning methods; (2) Unify the theories on decomposition of error into discrimination and calibration components stemming from the statistical and machine learning communities to derive a refined measure of alteration that can be calculated from measures of error and discrimination. We will compare the performance of the new methods with existing ones in different predictive models derived from real clinical data related to different medical domains. ? ? ?

Agency
National Institute of Health (NIH)
Institute
National Library of Medicine (NLM)
Type
Research Project (R01)
Project #
5R01LM009520-02
Application #
7435263
Study Section
Biomedical Library and Informatics Review Committee (BLR)
Program Officer
Sim, Hua-Chuan
Project Start
2007-06-01
Project End
2010-05-31
Budget Start
2008-06-01
Budget End
2009-05-31
Support Year
2
Fiscal Year
2008
Total Cost
$373,392
Indirect Cost
Name
Brigham and Women's Hospital
Department
Type
DUNS #
030811269
City
Boston
State
MA
Country
United States
Zip Code
02115
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Dai, Wenrui; Xiong, Hongkai; Jiang, Xiaoqian et al. (2013) An Adaptive Difference Distribution-based Coding with Hierarchical Tree Structure for DNA Sequence Compression. Proc Data Compress Conf 2013:371-380
Wang, Shuang; Jiang, Xiaoqian; Wu, Yuan et al. (2013) EXpectation Propagation LOgistic REgRession (EXPLORER): distributed privacy-preserving online model learning. J Biomed Inform 46:480-96
Que, Jialan; Jiang, Xiaoqian; Ohno-Machado, Lucila (2012) A collaborative framework for Distributed Privacy-Preserving Support Vector Machine learning. AMIA Annu Symp Proc 2012:1350-9
Wu, Yuan; Jiang, Xiaoqian; Kim, Jihoon et al. (2012) I-spline Smoothing for Calibrating Predictive Models. AMIA Jt Summits Transl Sci Proc 2012:39-46
Jiang, Xiaoqian; Kim, Jihoon; Wu, Yuan et al. (2012) Selecting cases for whom additional tests can improve prognostication. AMIA Annu Symp Proc 2012:1260-8
Dreiseitl, Stephan; Osl, Melanie (2012) Testing the calibration of classification models from first principles. AMIA Annu Symp Proc 2012:164-9
Jiang, Xiaoqian; Menon, Aditya; Wang, Shuang et al. (2012) Doubly Optimized Calibrated Support Vector Machine (DOC-SVM): an algorithm for joint optimization of discrimination and calibration. PLoS One 7:e48823

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