serum creatinine distinguishes duchenne muscular dystrophy from becker muscular dystrophy in patients aged ≤3 years: a retrospective study

serum creatinine distinguishes duchenne muscular dystrophy from becker muscular dystrophy in patients aged ≤3 years: a retrospective study

;Liang Wang;Menglong Chen;Ruojie He;Yiming Sun;Juan Yang;Lulu Xiao;Jiqing Cao;Huili Zhang;Cheng Zhang
journal of photochemistry and photobiology a: chemistry 2017 Vol. 8 pp. -
201
wang2017frontiersserum

Abstract

Here, we investigated correlations between serum creatinine (SCRN) levels and clinical phenotypes of dystrophinopathy in young patients. Sixty-eight patients with dystrophinopathy at the Neuromuscular Clinic, The First Affiliated Hospital, Sun Yat-sen University, were selected for this study. The diagnosis of dystrophinopathy was based on clinical manifestation, biochemical changes, and molecular analysis. Some patients underwent muscle biopsies; SCRN levels were tested when patients were ≤3 years old, and reading frame changes were analyzed. Each patient was followed up, and motor function and clinical phenotype were assessed when the same patients were ≥4 years old. Our findings indicated that in young patients, lower SCRN levels were associated with increased disease severity (p < 0.01) and that SCRN levels were the highest in patients exhibiting mild Becker muscular dystrophy (BMD) (p < 0.001) and the lowest in patients with Duchenne muscular dystrophy (DMD) (p < 0.01) and were significantly higher in patients carrying in-frame mutations than in patients carrying out-of-frame mutations (p < 0.001). SCRN level cutoff values for identifying mild BMD [18 µmol/L; area under the curve (AUC): 0.947; p < 0.001] and DMD (17 µmol/L; AUC: 0.837; p < 0.001) were established. These results suggest that SCRN might be a valuable biomarker for distinguishing DMD from BMD in patients aged ≤3 years and could assist in the selection of appropriate treatment strategies.

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201498
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10.3389/fneur.2017.00196
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