» Articles » PMID: 25141076

RandomForest4Life: a Random Forest for Predicting ALS Disease Progression

Overview
Specialty Neurology
Date 2014 Aug 21
PMID 25141076
Citations 23
Authors
Affiliations
Soon will be listed here.
Abstract

We describe a method for predicting disease progression in amyotrophic lateral sclerosis (ALS) patients. The method was developed as a submission to the DREAM Phil Bowen ALS Prediction Prize4Life Challenge of summer 2012. Based on repeated patient examinations over a three- month period, we used a random forest algorithm to predict future disease progression. The procedure was set up and internally evaluated using data from 1197 ALS patients. External validation by an expert jury was based on undisclosed information of an additional 625 patients; all patient data were obtained from the PRO-ACT database. In terms of prediction accuracy, the approach described here ranked third best. Our interpretation of the prediction model confirmed previous reports suggesting that past disease progression is a strong predictor of future disease progression measured on the ALS functional rating scale (ALSFRS). We also found that larger variability in initial ALSFRS scores is linked to faster future disease progression. The results reported here furthermore suggested that approaches taking the multidimensionality of the ALSFRS into account promise some potential for improved ALS disease prediction.

Citing Articles

Role of artificial intelligence in predicting neurological outcomes in postcardiac resuscitation.

Khawar M, Abdus Saboor H, Eric R, Arain N, Bano S, Mohamed Abaker M Ann Med Surg (Lond). 2024; 86(12):7202-7211.

PMID: 39649879 PMC: 11623902. DOI: 10.1097/MS9.0000000000002673.


Machine learning and brain-computer interface approaches in prognosis and individualized care strategies for individuals with amyotrophic lateral sclerosis: A systematic review.

Kew S, Mok S, Goh C MethodsX. 2024; 13:102765.

PMID: 39286440 PMC: 11403252. DOI: 10.1016/j.mex.2024.102765.


Predicting Survival for Veno-Arterial ECMO Using Conditional Inference Trees-A Multicenter Study.

Braun J, Sahli S, Spahn D, Roder D, Neb H, Lotz G J Clin Med. 2023; 12(19).

PMID: 37834887 PMC: 10573956. DOI: 10.3390/jcm12196243.


Quantitative Brain MRI Metrics Distinguish Four Different ALS Phenotypes: A Machine Learning Based Study.

Rajagopalan V, Chaitanya K, Pioro E Diagnostics (Basel). 2023; 13(9).

PMID: 37174914 PMC: 10177762. DOI: 10.3390/diagnostics13091521.


Implications of Artificial Intelligence Algorithms in the Diagnosis and Treatment of Motor Neuron Diseases-A Review.

Lopez-Bernal D, Balderas D, Ponce P, Rojas M, Molina A Life (Basel). 2023; 13(4).

PMID: 37109560 PMC: 10146231. DOI: 10.3390/life13041031.