scholarly journals Matched Forest: supervised learning for high-dimensional matched case–control studies

2019 ◽  
Author(s):  
Nooshin Shomal Zadeh ◽  
Sangdi Lin ◽  
George C Runger

Abstract Motivation Matched case–control analysis is widely used in biomedical studies to identify exposure variables associated with health conditions. The matching is used to improve the efficiency. Existing variable selection methods for matched case–control studies are challenged in high-dimensional settings where interactions among variables are also important. We describe a quite different method for high-dimensional matched case–control data, based on the potential outcome model, which is not only flexible regarding the number of matching and exposure variables but also able to detect interaction effects. Results We present Matched Forest (MF), an algorithm for variable selection in matched case–control data. The method preserves the case and control values in each instance but transforms the matched case–control data with added counterfactuals. A modified variable importance score from a supervised learner is used to detect important variables. The method is conceptually simple and can be applied with widely available software tools. Simulation studies show the effectiveness of MF in identifying important variables. MF is also applied to data from the biomedical domain and its performance is compared with alternative approaches. Availability and implementation R code for implementing MF is available at https://github.com/NooshinSh/Matched_Forest. Supplementary information Supplementary data are available at Bioinformatics online.

2012 ◽  
Vol 38 (1) ◽  
pp. 51-61 ◽  
Author(s):  
Rami Alissa ◽  
Richard J. Oliver

Dental implant treatment is an important therapeutic modality with documented long-term success for replacement of missing teeth. However, dental implants can be susceptible to disease conditions or healing complications that may lead to implant loss. This case-control study identified several risk indicators associated with failure such as smoking and alcohol consumption. The use of postoperative antibiotics or wide-diameter implants may significantly reduce implant failure. Knowledge of patient-related risk factors may assist the clinician in proper case selection and treatment planning.


BMJ Open ◽  
2019 ◽  
Vol 9 (3) ◽  
pp. e024415 ◽  
Author(s):  
Donald A Redelmeier ◽  
Fizza Manzoor

ImportanceDrunk driving is a major cause of death in North America, yet physicians rarely counsel patients on the risks of drinking and driving.ObjectiveTo test whether the risks of a life-threatening alcohol-related traffic crash were further accentuated by adverse weather.DesignDouble matched case–control analysis of hospitalised patients.SettingCanada’s largest trauma centre between 1 January 1995 and 1 January 2015.ParticipantsPatients hospitalised due to a life-threatening alcohol-related traffic crash.ExposureRelative risk of a crash associated with adverse weather estimated by evaluating the weather at the place and time of the crash (cases) compared with the weather at the same place and time a week earlier and a week later (controls).ResultsA total of 2088 patients were included, of whom the majority were drivers injured at night. Adverse weather prevailed among 312 alcohol-related crashes and was significantly more frequent compared with control circumstances. The relative risk of a life-threatening alcohol-related traffic crash was 19% higher during adverse weather compared with normal weather (95% CI: 5 to 35, p=0.006). The absolute increase in risk amounted to 43 additional crashes, extended to diverse groups of patients, applied during night-time and daytime, contributed to about 793 additional patient-days in hospital and was distinct from the risks for drivers who were negative for alcohol.ConclusionsAdverse weather was associated with an increased risk of a life-threatening alcohol-related traffic crash. An awareness of this risk might inform warnings to patients about traffic safety and counselling alternatives to drinking and driving.


2012 ◽  
Vol 20 (2) ◽  
pp. 482-490 ◽  
Author(s):  
Ching-Wei D. Tzeng ◽  
Thomas A. Aloia ◽  
Jean-Nicolas Vauthey ◽  
George J. Chang ◽  
Lee M. Ellis ◽  
...  

Author(s):  
Josephine Asafu-Adjei ◽  
Mahlet G. Tadesse ◽  
Brent Coull ◽  
Raji Balasubramanian ◽  
Michael Lev ◽  
...  

AbstractMatched case-control designs are currently used in many biomedical applications. To ensure high efficiency and statistical power in identifying features that best discriminate cases from controls, it is important to account for the use of matched designs. However, in the setting of high dimensional data, few variable selection methods account for matching. Bayesian approaches to variable selection have several advantages, including the fact that such approaches visit a wider range of model subsets. In this paper, we propose a variable selection method to account for case-control matching in a Bayesian context and apply it using simulation studies, a matched brain imaging study conducted at Massachusetts General Hospital, and a matched cardiovascular biomarker study conducted by the High Risk Plaque Initiative.


2012 ◽  
Vol 188 (4) ◽  
pp. 1115-1119 ◽  
Author(s):  
John J. Knoedler ◽  
Stephen A. Boorjian ◽  
Simon P. Kim ◽  
Christopher J. Weight ◽  
Prabin Thapa ◽  
...  

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