TY - JOUR
T1 - Prognostic categories for amyotrophic lateral sclerosis
AU - Scotton, William J.
AU - Scott, Kirsten M.
AU - Moore, Dan H.
AU - Almedom, Leeza
AU - Wijesekera, Lokesh C.
AU - Janssen, Anna
AU - Nigro, Catherine
AU - Sakel, Mohammed
AU - Leigh, Peter N.
AU - Shaw, Chris
AU - Al-Chalabi, Ammar
PY - 2012/10
Y1 - 2012/10
N2 - Our objective was to generate a prognostic classification method for amyotrophic lateral sclerosis (ALS) from a prognostic model built using clinical variables from a population register. We carried out a retrospective multivariate analysis of 713 patients with ALS over a 20-year period from the South-East England Amyotrophic Lateral Sclerosis (SEALS) population register. Patients were randomly allocated to 'discovery' or 'test' cohorts. A prognostic score was calculated using the discovery cohort and then used to predict survival in the test cohort. The score was used as a predictor variable to split the test cohort in four prognostic categories (good, moderate, average, poor). The accuracy of the score in predicting survival was tested by checking whether the predicted survival fell within the actual survival tertile which that patient was in. A prognostic score generated from one cohort of patients predicted survival for a second cohort of patients (r2 = 0.72). Six variables were included in the survival model: age at onset, diagnostic delay, El Escorial category, use of riluzole, gender and site of onset. Cox regression demonstrated a strong relationship between these variables and survival (χ2 80.8, df 1, p <0.0001, n = 343) in the test cohort. Kaplan-Meier analysis demonstrated a significant difference in survival between clinical categories (log rank 161.932, df 3, p <0.001), and the prognostic score generated for the test cohort accurately predicted survival in 64% of the patients. In conclusion, it is possible to correctly classify patients into prognostic categories using clinical data easily available at time of diagnosis.
AB - Our objective was to generate a prognostic classification method for amyotrophic lateral sclerosis (ALS) from a prognostic model built using clinical variables from a population register. We carried out a retrospective multivariate analysis of 713 patients with ALS over a 20-year period from the South-East England Amyotrophic Lateral Sclerosis (SEALS) population register. Patients were randomly allocated to 'discovery' or 'test' cohorts. A prognostic score was calculated using the discovery cohort and then used to predict survival in the test cohort. The score was used as a predictor variable to split the test cohort in four prognostic categories (good, moderate, average, poor). The accuracy of the score in predicting survival was tested by checking whether the predicted survival fell within the actual survival tertile which that patient was in. A prognostic score generated from one cohort of patients predicted survival for a second cohort of patients (r2 = 0.72). Six variables were included in the survival model: age at onset, diagnostic delay, El Escorial category, use of riluzole, gender and site of onset. Cox regression demonstrated a strong relationship between these variables and survival (χ2 80.8, df 1, p <0.0001, n = 343) in the test cohort. Kaplan-Meier analysis demonstrated a significant difference in survival between clinical categories (log rank 161.932, df 3, p <0.001), and the prognostic score generated for the test cohort accurately predicted survival in 64% of the patients. In conclusion, it is possible to correctly classify patients into prognostic categories using clinical data easily available at time of diagnosis.
KW - Amyotrophic lateral sclerosis
KW - Clinical classification
KW - Motor neuron disease
KW - Population register
KW - Prognostic modelling
UR - https://www.scopus.com/pages/publications/84866073476
U2 - 10.3109/17482968.2012.679281
DO - 10.3109/17482968.2012.679281
M3 - Article
C2 - 22670880
AN - SCOPUS:84866073476
SN - 1748-2968
VL - 13
SP - 502
EP - 508
JO - Amyotrophic Lateral Sclerosis
JF - Amyotrophic Lateral Sclerosis
IS - 6
ER -