Predicting Individualized Effects of Internet-Based Treatment for Genito-Pelvic Pain/Penetration Disorder: Development and Internal Validation of a Multivariable Decision Tree

03/15/2023
by   Anna-Carlotta Zarski, et al.
0

Genito-Pelvic Pain/Penetration-Disorder (GPPPD) is a common disorder but rarely treated in routine care. Previous research documents that GPPPD symptoms can be treated effectively using internet-based psychological interventions. However, non-response remains common for all state-of-the-art treatments and it is unclear which patient groups are expected to benefit most from an internet-based intervention. Multivariable prediction models are increasingly used to identify predictors of heterogeneous treatment effects, and to allocate treatments with the greatest expected benefits. In this study, we developed and internally validated a multivariable decision tree model that predicts effects of an internet-based treatment on a multidimensional composite score of GPPPD symptoms. Data of a randomized controlled trial comparing the internet-based intervention to a waitlist control group (N =200) was used to develop a decision tree model using model-based recursive partitioning. Model performance was assessed by examining the apparent and bootstrap bias-corrected performance. The final pruned decision tree consisted of one splitting variable, joint dyadic coping, based on which two response clusters emerged. No effect was found for patients with low dyadic coping (n=33; d=0.12; 95 -0.57-0.80), while large effects (d=1.00; 95 predicted for those with high dyadic coping at baseline. The bootstrap-bias-corrected performance of the model was R^2=27.74 (RMSE=13.22).

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/20/2020

Learning and Testing Sub-groups with Heterogeneous Treatment Effects:A Sequence of Two Studies

There is strong interest in estimating how the magnitude of treatment ef...
research
02/19/2023

Interpret Your Care: Predicting the Evolution of Symptoms for Cancer Patients

Cancer treatment is an arduous process for patients and causes many side...
research
02/04/2022

Generalized Causal Tree for Uplift Modeling

Uplift modeling is crucial in various applications ranging from marketin...
research
02/22/2022

Counterfactual Phenotyping with Censored Time-to-Events

Estimation of treatment efficacy of real-world clinical interventions in...
research
02/22/2020

A Novel Decision Tree for Depression Recognition in Speech

Depression is a common mental disorder worldwide which causes a range of...
research
08/07/2023

Do machine learning methods lead to similar individualized treatment rules? A comparison study on real data

Identifying subgroups of patients who benefit from a treatment is a key ...
research
05/24/2018

Prediction of Autism Treatment Response from Baseline fMRI using Random Forests and Tree Bagging

Treating children with autism spectrum disorders (ASD) with behavioral i...

Please sign up or login with your details

Forgot password? Click here to reset