Beaudin Marie, Kamali Tahereh, Tang Whitney, Hagerman Katharine A, Dunaway Young Sally, Ghiglieri Lisa, Parker Dana M, Lehallier Benoit, Tesi-Rocha Carolina, Sampson Jacinda B, Duong Tina, Day John W
Department of Neurology and Neurological Sciences, Stanford School of Medicine, Stanford, CA 94304, USA.
Department of Neurology, Stanford Health Care, Stanford, CA 94304, USA.
J Clin Med. 2023 Oct 23;12(20):6696. doi: 10.3390/jcm12206696.
Disease-modifying treatments have transformed the natural history of spinal muscular atrophy (SMA), but the cellular pathways altered by SMN restoration remain undefined and biomarkers cannot yet precisely predict treatment response. We performed an exploratory cerebrospinal fluid (CSF) proteomic study in a diverse sample of SMA patients treated with nusinersen to elucidate therapeutic pathways and identify predictors of motor improvement. Proteomic analyses were performed on CSF samples collected before treatment (T0) and at 6 months (T6) using an Olink panel to quantify 1113 peptides. A supervised machine learning approach was used to identify proteins that discriminated patients who improved functionally from those who did not after 2 years of treatment. A total of 49 SMA patients were included (10 type 1, 18 type 2, and 21 type 3), ranging in age from 3 months to 65 years. Most proteins showed a decrease in CSF concentration at T6. The machine learning algorithm identified ARSB, ENTPD2, NEFL, and IFI30 as the proteins most predictive of improvement. The machine learning model was able to predict motor improvement at 2 years with 79.6% accuracy. The results highlight the potential application of CSF biomarkers to predict motor improvement following SMA treatment. Validation in larger datasets is needed.
疾病修饰治疗已经改变了脊髓性肌萎缩症(SMA)的自然病程,但SMN恢复所改变的细胞途径仍不明确,生物标志物尚不能精确预测治疗反应。我们对接受诺西那生治疗的不同SMA患者样本进行了一项探索性脑脊液(CSF)蛋白质组学研究,以阐明治疗途径并确定运动改善的预测指标。使用Olink检测板对治疗前(T0)和6个月时(T6)采集的脑脊液样本进行蛋白质组分析,以量化1113种肽段。采用监督式机器学习方法来识别能够区分治疗2年后功能改善患者和未改善患者的蛋白质。共纳入49例SMA患者(10例1型、18例2型和21例3型),年龄范围为3个月至65岁。大多数蛋白质在T6时脑脊液浓度降低。机器学习算法将ARSB、ENTPD2、NEFL和IFI30识别为最能预测改善情况的蛋白质。该机器学习模型能够以79.6%的准确率预测2年后的运动改善情况。结果突出了脑脊液生物标志物在预测SMA治疗后运动改善方面的潜在应用。需要在更大的数据集中进行验证。