논문/저서
Quantitative Predictive Models for the Degree of Disability After Acute Ischemic Stroke. | ||
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J Clin Pharmacol. 2018 Apr;58(4):549-557. doi: 10.1002/jcph.1039. Epub 2017 Nov 30. Quantitative Predictive Models for the Degree of Disability After Acute Ischemic Stroke. Lim HS, Kim SM, Kang DW.
Abstract
Although stroke is a leading cause of disability, the quantitative relationship between baseline clinical and imaging characteristics and long-term disability outcomes has rarely been studied. Prospectively collected clinical data from 405 patients with acute ischemic stroke including brain magnetic resonance images (MRIs) and disability outcomes assessed using the modified Rankin Scale (mRS) 3 month after the onset of disease were analyzed using a proportional odds cumulative logit model implemented in NONMEM. The relationship between the difference in lesion volume (DLV) - lesion volume measured by brain MRI 5 days later - lesion volume at the onset of the disease, and the mRS measured at 3 months (mRS3) was modeled first, and the potential covariates were tested. The Emax model best described the relationship between DLV and the logit probability of each mRS3. DLV, baseline stroke severity, age, and diabetes mellitus were identified as significant predictors of the probabilities of mRS3. The quantitative model constructed in the current analysis will enable us to predict the long-term disabilities of the patients with acute ischemic stroke using the patient-specific MRI and other clinical information, which will be useful for individualizing therapies and for making the clinical development of a novel drug more efficient.
KEYWORDS: NONMEM; ischemic stroke; lesion volume; logit model; modified Rankin Scale
PMID: 29194662 DOI: |