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Published in: BMC Medical Informatics and Decision Making 1/2014

Open Access 01-12-2014 | Research article

A three-step approach for the derivation and validation of high-performing predictive models using an operational dataset: congestive heart failure readmission case study

Authors: Samir E AbdelRahman, Mingyuan Zhang, Bruce E Bray, Kensaku Kawamoto

Published in: BMC Medical Informatics and Decision Making | Issue 1/2014

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Abstract

Background

The aim of this study was to propose an analytical approach to develop high-performing predictive models for congestive heart failure (CHF) readmission using an operational dataset with incomplete records and changing data over time.

Methods

Our analytical approach involves three steps: pre-processing, systematic model development, and risk factor analysis. For pre-processing, variables that were absent in >50% of records were removed. Moreover, the dataset was divided into a validation dataset and derivation datasets which were separated into three temporal subsets based on changes to the data over time. For systematic model development, using the different temporal datasets and the remaining explanatory variables, the models were developed by combining the use of various (i) statistical analyses to explore the relationships between the validation and the derivation datasets; (ii) adjustment methods for handling missing values; (iii) classifiers; (iv) feature selection methods; and (iv) discretization methods. We then selected the best derivation dataset and the models with the highest predictive performance. For risk factor analysis, factors in the highest-performing predictive models were analyzed and ranked using (i) statistical analyses of the best derivation dataset, (ii) feature rankers, and (iii) a newly developed algorithm to categorize risk factors as being strong, regular, or weak.

Results

The analysis dataset consisted of 2,787 CHF hospitalizations at University of Utah Health Care from January 2003 to June 2013. In this study, we used the complete-case analysis and mean-based imputation adjustment methods; the wrapper subset feature selection method; and four ranking strategies based on information gain, gain ratio, symmetrical uncertainty, and wrapper subset feature evaluators. The best-performing models resulted from the use of a complete-case analysis derivation dataset combined with the Class-Attribute Contingency Coefficient discretization method and a voting classifier which averaged the results of multi-nominal logistic regression and voting feature intervals classifiers. Of 42 final model risk factors, discharge disposition, discretized age, and indicators of anemia were the most significant. This model achieved a c-statistic of 86.8%.

Conclusion

The proposed three-step analytical approach enhanced predictive model performance for CHF readmissions. It could potentially be leveraged to improve predictive model performance in other areas of clinical medicine.
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Literature
2.
go back to reference Jencks SF, Williams MV, Coleman EA: Rehospitalizations among patients in the Medicare fee-for-service program. N Engl J Med. 2009, 360 (14): 1418-1428.CrossRefPubMed Jencks SF, Williams MV, Coleman EA: Rehospitalizations among patients in the Medicare fee-for-service program. N Engl J Med. 2009, 360 (14): 1418-1428.CrossRefPubMed
3.
go back to reference Allaudeen N, Schnipper JL, Orav EJ, Wachter RM, Vidyarthi AR: Inability of providers to predict unplanned readmissions. J Gen Intern Med. 2011, 26 (7): 771-776.CrossRefPubMedPubMedCentral Allaudeen N, Schnipper JL, Orav EJ, Wachter RM, Vidyarthi AR: Inability of providers to predict unplanned readmissions. J Gen Intern Med. 2011, 26 (7): 771-776.CrossRefPubMedPubMedCentral
4.
go back to reference Allaudeen N, Vidyarthi A, Maselli J, Auerbach A: Redefining readmission risk factors for general medicine patients. J Hosp Med. 2011, 6 (2): 54-60.CrossRefPubMed Allaudeen N, Vidyarthi A, Maselli J, Auerbach A: Redefining readmission risk factors for general medicine patients. J Hosp Med. 2011, 6 (2): 54-60.CrossRefPubMed
5.
go back to reference Amalakuhan B, Kiljanek L, Parvathaneni A, Hester M, Cheriyath P, Fischman D: A prediction model for COPD readmissions: catching up, catching our breath, and improving a national problem. 2012, Perspectives: Journal of Community Hospital Internal Medicine, 2(1)- Amalakuhan B, Kiljanek L, Parvathaneni A, Hester M, Cheriyath P, Fischman D: A prediction model for COPD readmissions: catching up, catching our breath, and improving a national problem. 2012, Perspectives: Journal of Community Hospital Internal Medicine, 2(1)-
6.
go back to reference Garcia-Perez L, Linertova R, Lorenzo-Riera A, Vazquez-Diaz JR, Duque-Gonzalez B, Sarria-Santamera A: Risk factors for hospital readmissions in elderly patients: a systematic review. QJM. 2011, 104 (8): 639-651.CrossRefPubMed Garcia-Perez L, Linertova R, Lorenzo-Riera A, Vazquez-Diaz JR, Duque-Gonzalez B, Sarria-Santamera A: Risk factors for hospital readmissions in elderly patients: a systematic review. QJM. 2011, 104 (8): 639-651.CrossRefPubMed
7.
go back to reference Halfon P, Eggli Y, van Melle G, Chevalier J, Wasserfallen JB, Burnand B: Measuring potentially avoidable hospital readmissions. J Clin Epidemiol. 2002, 55 (6): 573-587.CrossRefPubMed Halfon P, Eggli Y, van Melle G, Chevalier J, Wasserfallen JB, Burnand B: Measuring potentially avoidable hospital readmissions. J Clin Epidemiol. 2002, 55 (6): 573-587.CrossRefPubMed
8.
go back to reference Hasan O, Meltzer DO, Shaykevich SA, Bell CM, Kaboli PJ, Auerbach AD, Wetterneck TB, Arora VM, Zhang J, Schnipper JL: Hospital readmission in general medicine patients: a prediction model. J Gen Intern Med. 2010, 25 (3): 211-219.CrossRefPubMed Hasan O, Meltzer DO, Shaykevich SA, Bell CM, Kaboli PJ, Auerbach AD, Wetterneck TB, Arora VM, Zhang J, Schnipper JL: Hospital readmission in general medicine patients: a prediction model. J Gen Intern Med. 2010, 25 (3): 211-219.CrossRefPubMed
9.
go back to reference Howell S, Coory M, Martin J, Duckett S: Using routine inpatient data to identify patients at risk of hospital readmission. BMC Health Serv Res. 2009, 9 (96): 96-CrossRefPubMedPubMedCentral Howell S, Coory M, Martin J, Duckett S: Using routine inpatient data to identify patients at risk of hospital readmission. BMC Health Serv Res. 2009, 9 (96): 96-CrossRefPubMedPubMedCentral
10.
go back to reference Kansagara D, Englander H, Salanitro A, Kagen D, Theobald C, Freeman M, Kripalani S: Risk prediction models for hospital readmission: a systematic review. JAMA. 2011, 306 (15): 1688-1698.CrossRefPubMedPubMedCentral Kansagara D, Englander H, Salanitro A, Kagen D, Theobald C, Freeman M, Kripalani S: Risk prediction models for hospital readmission: a systematic review. JAMA. 2011, 306 (15): 1688-1698.CrossRefPubMedPubMedCentral
11.
go back to reference Khawaja FJ, Shah ND, Lennon RJ, Slusser JP, Alkatib AA, Rihal CS, Gersh BJ, Montori VM, Holmes DR, Bell MR, Curtis JP, Krumholz HM, Ting HH: Factors associated with 30-day readmission rates after percutaneous coronary intervention. Arch Intern Med. 2012, 172 (2): 112-117.CrossRefPubMed Khawaja FJ, Shah ND, Lennon RJ, Slusser JP, Alkatib AA, Rihal CS, Gersh BJ, Montori VM, Holmes DR, Bell MR, Curtis JP, Krumholz HM, Ting HH: Factors associated with 30-day readmission rates after percutaneous coronary intervention. Arch Intern Med. 2012, 172 (2): 112-117.CrossRefPubMed
13.
go back to reference Lichtman JH, Leifheit-Limson EC, Jones SB, Watanabe E, Bernheim SM, Phipps MS, Bhat KR, Savage SV, Goldstein LB: Predictors of hospital readmission after stroke: a systematic review. Stroke. 2010, 41 (11): 2525-2533.CrossRefPubMedPubMedCentral Lichtman JH, Leifheit-Limson EC, Jones SB, Watanabe E, Bernheim SM, Phipps MS, Bhat KR, Savage SV, Goldstein LB: Predictors of hospital readmission after stroke: a systematic review. Stroke. 2010, 41 (11): 2525-2533.CrossRefPubMedPubMedCentral
14.
go back to reference Silverstein MD, Qin H, Mercer SQ, Fong J, Haydar Z: Risk factors for 30-day hospital readmission in patients ≥65 years of age. Proc (Bayl Univ Med Cent). 2008, 2008: 363-372. Silverstein MD, Qin H, Mercer SQ, Fong J, Haydar Z: Risk factors for 30-day hospital readmission in patients ≥65 years of age. Proc (Bayl Univ Med Cent). 2008, 2008: 363-372.
15.
go back to reference Van Walraven C, Bennett C, Jennings A, Austin PC, Forster AJ: Proportion of hospital readmissions deemed avoidable: a systematic review. CMAJ. 2011, 183 (7): E391-E402.CrossRefPubMedPubMedCentral Van Walraven C, Bennett C, Jennings A, Austin PC, Forster AJ: Proportion of hospital readmissions deemed avoidable: a systematic review. CMAJ. 2011, 183 (7): E391-E402.CrossRefPubMedPubMedCentral
16.
go back to reference Walraven CV, Wong J, Forster A: LACE+ index: extension of a validated index to predict early death or urgent readmission after hospital discharge using administrative data. Open Med. 2012, 6 (3): e80-e90.PubMedPubMedCentral Walraven CV, Wong J, Forster A: LACE+ index: extension of a validated index to predict early death or urgent readmission after hospital discharge using administrative data. Open Med. 2012, 6 (3): e80-e90.PubMedPubMedCentral
17.
go back to reference Coleman EA, Min SJ, Chomiak A, Kramer AM: Posthospital care transitions: patterns, complications, and risk identification. Health Serv Res. 2004, 39 (5): 1449-1465.CrossRefPubMedPubMedCentral Coleman EA, Min SJ, Chomiak A, Kramer AM: Posthospital care transitions: patterns, complications, and risk identification. Health Serv Res. 2004, 39 (5): 1449-1465.CrossRefPubMedPubMedCentral
18.
go back to reference Choubey SK, Deogun JS, Raghavan VV, Sever H: A comparison of feature selection algorithms in the context of rough classifiers. 1996, 2: 1122-1128. Choubey SK, Deogun JS, Raghavan VV, Sever H: A comparison of feature selection algorithms in the context of rough classifiers. 1996, 2: 1122-1128.
19.
go back to reference Lazar C, Taminau J, Meganck S, Steenhoff D, Coletta A, Molter C, de Schaetzen V, Duque R, Bersini H, Nowe A: A survey on filter techniques for feature selection in gene expression microarray analysis. IEEE/ACM Trans Comput Biol Bioinform. 2012, 9 (4): 1106-1119.CrossRefPubMed Lazar C, Taminau J, Meganck S, Steenhoff D, Coletta A, Molter C, de Schaetzen V, Duque R, Bersini H, Nowe A: A survey on filter techniques for feature selection in gene expression microarray analysis. IEEE/ACM Trans Comput Biol Bioinform. 2012, 9 (4): 1106-1119.CrossRefPubMed
20.
go back to reference Molina LC, Belanche L, Nebot A: Feature selection algorithms: a survey and experimental evaluation. ICDM '02 Proceedings of the 2002 IEEE International Conference on Data Mining. 2002, USA: IEEE Computer Society, 306-313. Molina LC, Belanche L, Nebot A: Feature selection algorithms: a survey and experimental evaluation. ICDM '02 Proceedings of the 2002 IEEE International Conference on Data Mining. 2002, USA: IEEE Computer Society, 306-313.
21.
go back to reference Agarwal J: Predicting Risk of Re-hospitalization for Congestive Heart Failure Patients. 2012, Masters of Science: University of Washington Agarwal J: Predicting Risk of Re-hospitalization for Congestive Heart Failure Patients. 2012, Masters of Science: University of Washington
22.
go back to reference Au AG, McAlister FA, Bakal JA, Ezekowitz J, Kaul P, van Walraven C: Predicting the risk of unplanned readmission or death within 30 days of discharge after a heart failure hospitalization. Am Heart J. 2012, 164 (3): 365-372.CrossRefPubMed Au AG, McAlister FA, Bakal JA, Ezekowitz J, Kaul P, van Walraven C: Predicting the risk of unplanned readmission or death within 30 days of discharge after a heart failure hospitalization. Am Heart J. 2012, 164 (3): 365-372.CrossRefPubMed
23.
go back to reference Brand C, Sundararajan V, Jones C, Hutchinson A, Campbell D: Readmission patterns in patients with chronic obstructive pulmonary disease, chronic heart failure and diabetes mellitus: an administrative dataset analysis. Intern Med J. 2005, 35 (5): 296-299.CrossRefPubMed Brand C, Sundararajan V, Jones C, Hutchinson A, Campbell D: Readmission patterns in patients with chronic obstructive pulmonary disease, chronic heart failure and diabetes mellitus: an administrative dataset analysis. Intern Med J. 2005, 35 (5): 296-299.CrossRefPubMed
24.
go back to reference Coffey RM, Misra A, Barrett M, Andrews RM, Mutter R, Moy E: Congestive heart failure: who is likely to be readmitted?. Med Care Res Rev. 2012, 69 (5): 602-616.CrossRefPubMed Coffey RM, Misra A, Barrett M, Andrews RM, Mutter R, Moy E: Congestive heart failure: who is likely to be readmitted?. Med Care Res Rev. 2012, 69 (5): 602-616.CrossRefPubMed
25.
go back to reference Gronda E, Mangiavacchi M, Andreuzzi B, Municino A, Bologna A, Schweiger C, Barbieri P: A population-based study on overt heart failure in Lombardy (survey of hospitalization in 1996 and 1997). Ital Heart J. 2002, 3 (2): 96-103.PubMed Gronda E, Mangiavacchi M, Andreuzzi B, Municino A, Bologna A, Schweiger C, Barbieri P: A population-based study on overt heart failure in Lombardy (survey of hospitalization in 1996 and 1997). Ital Heart J. 2002, 3 (2): 96-103.PubMed
26.
go back to reference Hammill BG, Curtis LH, Fonarow GC, Heidenreich PA, Yancy CW, Peterson ED, Hernandez AF: Incremental value of clinical data beyond claims data in predicting 30-day outcomes after heart failure hospitalization. Circulation Cardiovascular quality and outcomes. 2011, 4 (1): 60-67.CrossRefPubMed Hammill BG, Curtis LH, Fonarow GC, Heidenreich PA, Yancy CW, Peterson ED, Hernandez AF: Incremental value of clinical data beyond claims data in predicting 30-day outcomes after heart failure hospitalization. Circulation Cardiovascular quality and outcomes. 2011, 4 (1): 60-67.CrossRefPubMed
27.
go back to reference Harjai KJ, Thompson HW, Turgut T, Shah M: Simple clinical variables are markers of the propensity for readmission in patients hospitalized with heart failure. Am J Cardiol. 2001, 87 (2): 234-237. A239CrossRefPubMed Harjai KJ, Thompson HW, Turgut T, Shah M: Simple clinical variables are markers of the propensity for readmission in patients hospitalized with heart failure. Am J Cardiol. 2001, 87 (2): 234-237. A239CrossRefPubMed
28.
go back to reference Jiang W, Alexander J, Christopher E, Kuchibhatla M, Gaulden LH, Cuffe MS, Blazing MA, Davenport C, Califf RM, Krishnan RR, O'Connor CM: Relationship of depression to increased risk of mortality and rehospitalization in patients with congestive heart failure. Arch Intern Med. 2001, 161 (15): 1849-1856.CrossRefPubMed Jiang W, Alexander J, Christopher E, Kuchibhatla M, Gaulden LH, Cuffe MS, Blazing MA, Davenport C, Califf RM, Krishnan RR, O'Connor CM: Relationship of depression to increased risk of mortality and rehospitalization in patients with congestive heart failure. Arch Intern Med. 2001, 161 (15): 1849-1856.CrossRefPubMed
29.
go back to reference Joynt KE, Jha AK: Who has higher readmission rates for heart failure, and why? Implications for efforts to improve care using financial incentives. Circulation Cardiovascular quality and outcomes. 2011, 4 (1): 53-59.CrossRefPubMed Joynt KE, Jha AK: Who has higher readmission rates for heart failure, and why? Implications for efforts to improve care using financial incentives. Circulation Cardiovascular quality and outcomes. 2011, 4 (1): 53-59.CrossRefPubMed
30.
go back to reference Kossovsky MP, Sarasin FP, Perneger TV, Chopard P, Sigaud P, Gaspoz J-M: Unplanned readmissions of patients with congestive heart failure: do they reflect in-hospital quality of care or patient characteristics?. Am J Med. 2000, 109 (5): 386-390.CrossRefPubMed Kossovsky MP, Sarasin FP, Perneger TV, Chopard P, Sigaud P, Gaspoz J-M: Unplanned readmissions of patients with congestive heart failure: do they reflect in-hospital quality of care or patient characteristics?. Am J Med. 2000, 109 (5): 386-390.CrossRefPubMed
31.
go back to reference Krumholz H, Normand S-L, Keenan P, Lin Z, Drye E, Bhat K, Wang Y, Ross J, Schuur J, Stauffer B, Bernheim S, Epstein A, Herrin J, Federer J, Mattera J, Wang Y, Mulvey G, Schreiner G: Hospital 30-day heart failure readmissionmeasure:methodology. Centers for Medicare & Medicaid Services (CMS). 2008 Krumholz H, Normand S-L, Keenan P, Lin Z, Drye E, Bhat K, Wang Y, Ross J, Schuur J, Stauffer B, Bernheim S, Epstein A, Herrin J, Federer J, Mattera J, Wang Y, Mulvey G, Schreiner G: Hospital 30-day heart failure readmissionmeasure:methodology. Centers for Medicare & Medicaid Services (CMS). 2008
32.
go back to reference Natale J, Wang S, Taylor J: A Decision Tree Model for Predicting Heart Failure Patient Readmissions. Proceedings of the. 2013, 2-13. Industrial and Systems Engineering Research Conference 2–13 Natale J, Wang S, Taylor J: A Decision Tree Model for Predicting Heart Failure Patient Readmissions. Proceedings of the. 2013, 2-13. Industrial and Systems Engineering Research Conference 2–13
33.
go back to reference Ross JS, Mulvey GK, Stauffer B, Patlolla V, Bernheim SM, Keenan PS, Krumholz HM: Statistical models and patient predictors of readmission for heart failure: a systematic review. Arch Intern Med. 2008, 168 (13): 1371-1386.CrossRefPubMed Ross JS, Mulvey GK, Stauffer B, Patlolla V, Bernheim SM, Keenan PS, Krumholz HM: Statistical models and patient predictors of readmission for heart failure: a systematic review. Arch Intern Med. 2008, 168 (13): 1371-1386.CrossRefPubMed
34.
go back to reference Wong EL, Cheung AW, Leung MC, Yam CH, Chan FW, Wong FY, Yeoh EK: Unplanned readmission rates, length of hospital stay, mortality, and medical costs of ten common medical conditions: a retrospective analysis of Hong Kong hospital data. BMC Health Serv Res. 2011, 11: 149-CrossRefPubMedPubMedCentral Wong EL, Cheung AW, Leung MC, Yam CH, Chan FW, Wong FY, Yeoh EK: Unplanned readmission rates, length of hospital stay, mortality, and medical costs of ten common medical conditions: a retrospective analysis of Hong Kong hospital data. BMC Health Serv Res. 2011, 11: 149-CrossRefPubMedPubMedCentral
35.
go back to reference Zai AH, Ronquillo JG, Nieves R, Chueh HC, Kvedar JC, Jethwani K: Assessing hospital readmission risk factors in heart failure patients enrolled in a telemonitoring program. International journal of telemedicine and applications. 2013, 2013: 305819-CrossRefPubMedPubMedCentral Zai AH, Ronquillo JG, Nieves R, Chueh HC, Kvedar JC, Jethwani K: Assessing hospital readmission risk factors in heart failure patients enrolled in a telemonitoring program. International journal of telemedicine and applications. 2013, 2013: 305819-CrossRefPubMedPubMedCentral
37.
go back to reference Little RJ, D'Agostino R, Cohen ML, Dickersin K, Emerson SS, Farrar JT, Frangakis C, Hogan JW, Molenberghs G, Murphy SA, Neaton JD, Rotnitzky A, Scharfstein D, Shih WJ, Siegel JP, Stern H: The prevention and treatment of missing data in clinical trials. N Engl J Med. 2012, 367 (14): 1355-1360.CrossRefPubMedPubMedCentral Little RJ, D'Agostino R, Cohen ML, Dickersin K, Emerson SS, Farrar JT, Frangakis C, Hogan JW, Molenberghs G, Murphy SA, Neaton JD, Rotnitzky A, Scharfstein D, Shih WJ, Siegel JP, Stern H: The prevention and treatment of missing data in clinical trials. N Engl J Med. 2012, 367 (14): 1355-1360.CrossRefPubMedPubMedCentral
38.
go back to reference Luengo J, García S, Herrera F: On the choice of the best imputation methods for missing values considering three groups of classification methods. Knowl Inform Syst. 2011, 32 (1): 77-108.CrossRef Luengo J, García S, Herrera F: On the choice of the best imputation methods for missing values considering three groups of classification methods. Knowl Inform Syst. 2011, 32 (1): 77-108.CrossRef
39.
go back to reference Kittler J, Hatef M, Duin RPW, Matas J: On Combining Classifiers. IEEE Trans Pattern Anal Mach Intell. 1998, 20 (3): 226-239.CrossRef Kittler J, Hatef M, Duin RPW, Matas J: On Combining Classifiers. IEEE Trans Pattern Anal Mach Intell. 1998, 20 (3): 226-239.CrossRef
41.
go back to reference Wu Y, Rosenbloom ST, Denny JC, Miller RA, Mani S, Guise DA, Xu H: Detecting Abbreviations in Discharge Summaries using Machine Learning Methods. AMIA Annu Symp Proc: 2011; Chicago, IL. 2011 Wu Y, Rosenbloom ST, Denny JC, Miller RA, Mani S, Guise DA, Xu H: Detecting Abbreviations in Discharge Summaries using Machine Learning Methods. AMIA Annu Symp Proc: 2011; Chicago, IL. 2011
42.
go back to reference Lustgarten JL, Gopalakrishnan V, Grover H, Visweswaran S: Improving Classification Performance with Discretization on Biomedical Datasets. AMIA 2008 Symposium Proceedings. 2008, 445-449. Lustgarten JL, Gopalakrishnan V, Grover H, Visweswaran S: Improving Classification Performance with Discretization on Biomedical Datasets. AMIA 2008 Symposium Proceedings. 2008, 445-449.
43.
go back to reference Lustgarten JL, Visweswaran S, Gopalakrishnan V, Cooper GF: Application of an efficient Bayesian discretization method to biomedical data. BMC Bioinformatics. 2011, 12: 309-CrossRefPubMedPubMedCentral Lustgarten JL, Visweswaran S, Gopalakrishnan V, Cooper GF: Application of an efficient Bayesian discretization method to biomedical data. BMC Bioinformatics. 2011, 12: 309-CrossRefPubMedPubMedCentral
47.
go back to reference Quan H, Sundararajan V, Halfon P, Fong A, Burnand B, Luthi JC, Saunders LD, Beck CA, Feasby TE, Ghali WA: Coding algorithms for defining comorbidities in ICD-9-CM and ICD-10 administrative data. Medical care. 2005, 43 (11): 1130-1139.CrossRefPubMed Quan H, Sundararajan V, Halfon P, Fong A, Burnand B, Luthi JC, Saunders LD, Beck CA, Feasby TE, Ghali WA: Coding algorithms for defining comorbidities in ICD-9-CM and ICD-10 administrative data. Medical care. 2005, 43 (11): 1130-1139.CrossRefPubMed
48.
go back to reference Balas EA, Austin SM, Mitchell JA, Ewigman BG, Bopp KD, Brown GD: The clinical value of computerized information services. A review of 98 randomized clinical trials. Arch Fam Med. 1996, 5 (5): 271-278.CrossRefPubMed Balas EA, Austin SM, Mitchell JA, Ewigman BG, Bopp KD, Brown GD: The clinical value of computerized information services. A review of 98 randomized clinical trials. Arch Fam Med. 1996, 5 (5): 271-278.CrossRefPubMed
49.
go back to reference Desai MM, Stauffer BD, Feringa HH, Schreiner GC: Statistical models and patient predictors of readmission for acute myocardial infarction: a systematic review. Circulation Cardiovascular quality and outcomes. 2009, 2 (5): 500-507.CrossRefPubMed Desai MM, Stauffer BD, Feringa HH, Schreiner GC: Statistical models and patient predictors of readmission for acute myocardial infarction: a systematic review. Circulation Cardiovascular quality and outcomes. 2009, 2 (5): 500-507.CrossRefPubMed
51.
go back to reference Garci¿a S, Luengo J, Saez JA, Lopez V, Herrera F: A Survey of Discretization Techniques: Taxonomy and Empirical Analysis in Supervised Learning. IEEE Transactions on Knowledge and Data Engineering. 2012 Garci¿a S, Luengo J, Saez JA, Lopez V, Herrera F: A Survey of Discretization Techniques: Taxonomy and Empirical Analysis in Supervised Learning. IEEE Transactions on Knowledge and Data Engineering. 2012
52.
go back to reference Kurgan LA, Cios KJ: CAIM discretization algorithm. IEEE Trans Knowl Data Eng. 2004, 16 (2): 145-153.CrossRef Kurgan LA, Cios KJ: CAIM discretization algorithm. IEEE Trans Knowl Data Eng. 2004, 16 (2): 145-153.CrossRef
53.
go back to reference Tsai C-J, Lee C-I, Yang W-P: A discretization algorithm based on Class-Attribute Contingency Coefficient. Inform Sci. 2008, 178 (3): 714-731.CrossRef Tsai C-J, Lee C-I, Yang W-P: A discretization algorithm based on Class-Attribute Contingency Coefficient. Inform Sci. 2008, 178 (3): 714-731.CrossRef
55.
go back to reference Cessie SL, Houwelingen JCV: Ridge estimators in logistic regression. J Roy Stat Soc C Appl Stat. 1992, 41: 191-201. Cessie SL, Houwelingen JCV: Ridge estimators in logistic regression. J Roy Stat Soc C Appl Stat. 1992, 41: 191-201.
56.
go back to reference Demiröz G, Güvenir HA: Classification by voting feature intervals. Machine Learning: ECML 97. 1997, 1224: 85-92. Demiröz G, Güvenir HA: Classification by voting feature intervals. Machine Learning: ECML 97. 1997, 1224: 85-92.
57.
go back to reference Van Walraven C, Dhalla IA, Bell C, Etchells E, Stiell IG, Zarnke K, Austin PC, Forster AJ: Derivation and validation of an index to predict early death or unplanned readmission after discharge from hospital to the community. CMAJ. 2010, 182 (6): 551-557.CrossRefPubMedPubMedCentral Van Walraven C, Dhalla IA, Bell C, Etchells E, Stiell IG, Zarnke K, Austin PC, Forster AJ: Derivation and validation of an index to predict early death or unplanned readmission after discharge from hospital to the community. CMAJ. 2010, 182 (6): 551-557.CrossRefPubMedPubMedCentral
58.
go back to reference Zhang M, Velasco F, Musser R, Kawamoto K: Enabling Cross-Platform Clinical Decision Support through Web-Based Decision Support in Commercial Electronic Health Record Systems: proposal and Evaluation of Initial Prototype Implementations. AMIA. 2013 Zhang M, Velasco F, Musser R, Kawamoto K: Enabling Cross-Platform Clinical Decision Support through Web-Based Decision Support in Commercial Electronic Health Record Systems: proposal and Evaluation of Initial Prototype Implementations. AMIA. 2013
Metadata
Title
A three-step approach for the derivation and validation of high-performing predictive models using an operational dataset: congestive heart failure readmission case study
Authors
Samir E AbdelRahman
Mingyuan Zhang
Bruce E Bray
Kensaku Kawamoto
Publication date
01-12-2014
Publisher
BioMed Central
Published in
BMC Medical Informatics and Decision Making / Issue 1/2014
Electronic ISSN: 1472-6947
DOI
https://doi.org/10.1186/1472-6947-14-41

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