多发性硬化症诊断延迟月数的相关因素:计数回归模型的比较

IF 0.5 Q4 CLINICAL NEUROLOGY
Abolfazl Hosseinnataj, Roya Nikbakht, Seyed Nouraddin Mousavinasab, Sharareh Eskandarieh, Mohammad Ali Sahraian, Seyed Mohammad Baghbanian
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引用次数: 0

摘要

背景:多发性硬化症(MS)的原发症状出现后,诊断可能需要很长时间。本研究旨在使用计数回归模型来比较其拟合度,并确定影响MS诊断延迟的因素。方法:数据来自伊朗马赞德兰省的伊朗全国MS登记处(NMSRI),使用人口普查抽样至2022年4月。本研究采用泊松回归、负二项(NB)回归、零膨胀泊松(ZIP)回归和零膨胀负二项回归四种模型。结果:在这项针对2894名患者的研究中,74.0%为女性,8.5%有MS家族史。患者年龄的平均±标准差(SD)为34.96±9.41岁,平均延迟诊断为12.32±33.26个月,中位数为0(Q1-Q3:0-9)。NB回归模型显示出最好的表现,包括住院史和症状发作年份在内的因素对延迟诊断有显著影响。此外,扩展残疾状况量表(EDSS)评分在2017年前后存在显著差异;它还与性别、多发性硬化症类型和住院史有关。结论:在马赞德兰省,MS的平均诊断延迟和平均诊断年龄至关重要。多发性硬化症患者在很小的时候就发展成这种疾病,并且诊断延迟很长时间。症状出现的时间是MS诊断的一个重要因素,近年来,诊断过程有所改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Factors associated with the number of months of delaying in multiple sclerosis diagnosis: Comparison of count regression models.

Background: It may take a long time to diagnose multiple sclerosis (MS) since the emergence of primary symptoms. This study aimed to use count regression models to compare their fit and to identify factors affecting delay in the diagnosis of MS. Methods: Data were collected from the Nationwide MS Registry of Iran (NMSRI) for Mazandaran Province, Iran, using census sampling until April 2022. The four models of Poisson regression, negative binomial (NB) regression, zero-inflated Poisson (ZIP) regression, and zero-inflated negative binomial (ZINB) regression were used in this study. Results: In this study on 2894 patients, 74.0% were women, and 8.5% had a family history of MS. The mean ± standard deviation (SD) of the patients' age was 34.96 ± 9.41 years, and the mean delay in diagnosis was 12.32 ± 33.26 months, with a median of 0 (Q1-Q3: 0-9). The NB regression model showed the best performance, and factors, including a history of hospitalization and the year of symptom onset, had significant effects on a delayed diagnosis. Besides, the Expanded Disability Status Scale (EDSS) score was significantly different before and after 2017; it was also associated with sex, type of MS, and history of hospitalization. Conclusion: The mean diagnostic delay and the mean age of MS diagnosis are critical in Mazandaran Province. Patients with MS develop the disease at an early age and are diagnosed with a long delay. The time of symptom onset is a significant factor in the diagnosis of MS, and in recent years, there have been improvements in the diagnostic process.

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来源期刊
Current Journal of Neurology
Current Journal of Neurology CLINICAL NEUROLOGY-
CiteScore
0.80
自引率
14.30%
发文量
30
审稿时长
12 weeks
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