Peripheral blood RNA biomarkers can predict lesion severity in degenerative cervical myelopathy

Zhen-zhong Zheng, Jialin Chen, Jinghong Xu, Bing Jiang, Lei Li, Yawei Li, Yuliang Dai, Bing Wang
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Abstract

Degenerative cervical myelopathy is a common cause of spinal cord injury, with longer symptom duration and higher myelopathy severity indicating a worse prognosis. While numerous studies have investigated serological biomarkers for acute spinal cord injury, few studies have explored such biomarkers for diagnosing degenerative cervical myelopathy. This study involved 30 patients with degenerative cervical myelopathy (51.3 ± 7.3 years old, 12 women and 18 men), seven healthy controls (25.7 ± 1.7 years old, one woman and six men), and nine patients with cervical spondylotic radiculopathy (51.9 ± 8.6 years old, three women and six men). Analysis of blood samples from the three groups showed clear differences in transcriptomic characteristics. Enrichment analysis identified 128 differentially expressed genes that were enriched in patients with neurological disabilities. Using least absolute shrinkage and selection operator analysis, we constructed a five-gene model (TBCD, TPM2, PNKD, EIF4G2, and AP5Z1) to diagnose degenerative cervical myelopathy with an accuracy of 93.5%. One-gene models (TCAP and SDHA) identified mild and severe degenerative cervical myelopathy with accuracies of 83.3% and 76.7%, respectively. Signatures of two immune cell types (memory B cells and memory-activated CD4+ T cells) predicted lesion severity in degenerative cervical myelopathy with 80% accuracy. Our results suggest that peripheral blood RNA biomarkers could be used to predict levels of lesions in degenerative cervical myelopathy.
外周血 RNA 生物标记物可预测退行性颈椎病的病变严重程度
退行性颈椎脊髓病是脊髓损伤的常见原因,症状持续时间越长、脊髓病严重程度越高,预后越差。虽然已有许多研究对急性脊髓损伤的血清学生物标志物进行了调查,但很少有研究对诊断退行性颈椎脊髓病的生物标志物进行探讨。这项研究涉及 30 名退行性颈椎病患者(51.3 ± 7.3 岁,12 名女性和 18 名男性)、7 名健康对照组患者(25.7 ± 1.7 岁,1 名女性和 6 名男性)以及 9 名颈椎病根病患者(51.9 ± 8.6 岁,3 名女性和 6 名男性)。对三组患者血液样本的分析表明,他们的转录组特征存在明显差异。富集分析确定了 128 个差异表达基因,这些基因在神经残疾患者中富集。利用最小绝对缩减和选择算子分析,我们构建了一个五基因模型(TBCD、TPM2、PNKD、EIF4G2 和 AP5Z1)来诊断退行性颈椎脊髓病,准确率为 93.5%。单基因模型(TCAP 和 SDHA)可识别轻度和重度退行性颈椎病,准确率分别为 83.3% 和 76.7%。两种免疫细胞类型(记忆 B 细胞和记忆激活 CD4+ T 细胞)的特征预测退行性颈椎病病变严重程度的准确率为 80%。我们的研究结果表明,外周血RNA生物标志物可用于预测退行性颈椎病的病变程度。
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