基于磁共振成像放射组学的偏头痛患者uctal周围灰质机器学习模型。

IF 0.9 4区 医学 Q4 CLINICAL NEUROLOGY Ideggyogyaszati Szemle-Clinical Neuroscience Pub Date : 2024-01-30 DOI:10.18071/isz.77.0039
Ismail Mese, Rahsan Karaci, Ceylan Altintas Taslicay, Cengizhan Taslicay, Gur Akansel, Saime Fusun Domac
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引用次数: 0

摘要

背景和目的:本研究旨在探讨以下问题:对uctal灰质周围区域的核磁共振成像放射组学分析能否阐明各种偏头痛亚型的病理生理机制,使用这些放射组学特征的机器学习模型能否准确区分偏头痛患者和健康人,以及偏头痛亚型(包括症状重叠的非典型病例)?研究分析了偏头痛患者首次确诊后拍摄的初始 MRI 图像,并从健康受试者身上获取了额外的 MRI 扫描图像。应用放射组学模型分析了uctal灰质周围区域的所有 MRI 图像。数据集是随机的,如果组间存在类别不平衡,则使用超采样。采用基于最优算法的特征选择方法,选择最重要的 5-10 个特征来区分两组。人工智能算法的分类性能采用接收者操作特征分析法进行评估,以计算曲线下面积、分类准确性、灵敏度和特异性值。参与者必须确诊为发作性偏头痛、疑似偏头痛或慢性偏头痛。有先兆的患者、在过去六个月内使用过偏头痛预防药物的患者、患有慢性疾病、精神疾病、脑血管疾病、肿瘤性疾病或其他头痛类型的患者不在研究范围内。此外,研究还纳入了 102 名符合纳入和排除标准的健康受试者:在所有方法中,基于算法的信息增益特征缩减法性能最佳,一阶、灰度级大小区矩阵和灰度级共现矩阵类是最主要的特征类。机器学习模型正确地将 82.4% 的偏头痛患者与健康人进行了分类。在偏头痛组中,74.1%的发作性偏头痛-可能偏头痛患者和90.5%的慢性偏头痛患者被准确分类。可能偏头痛患者和发作性偏头痛患者在uctal灰质周围区域放射组学特征方面没有明显差异。kNN算法在对发作性偏头痛-可能偏头痛亚型进行分类时表现最佳,而随机森林算法在对偏头痛组和慢性偏头痛亚型进行分类时表现最佳:基于放射组学的机器学习模型利用偏头痛患者诊断和随访过程中获得的标准磁共振图像,不仅有望帮助偏头痛的临床诊断和分类,还有助于理解偏头痛的神经机制。
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MRI radiomics based machine learning model of the periaqueductal gray matter in migraine patients.

Background and purpose:

The aim of the study was to investigate the question: Can MRI radiomics analysis of the periaqueductal gray region elucidate the pathophysiological mechanisms underlying various migraine subtypes, and can a machine learning model using these radiomics features accurately differentiate between migraine patients and healthy individuals, as well as between migraine subtypes, including atypical cases with overlapping symptoms?

.

Methods:

The study analyzed initial MRI images of individuals taken after their first migraine diagnosis, and additional MRI scans were acquired from healthy subjects. Radiomics modeling was applied to analyze all the MRI images in the periaqueductal gray region. The dataset was randomized, and oversampling was used if there was class imbalance between groups. The optimal algorithm-based feature selection method was employed to select the most important 5-10 features to differentiate between the two groups. The classification performance of AI algorithms was evaluated using receiver operating characteristic analysis to calculate the area under the curve, classification accuracy, sensitivity, and specificity values. Participants were required to have a confirmed diagnosis of either episodic migraine, probable migraine, or chronic migraine. Patients with aura, those who used migraine-preventive medication within the past six months, or had chronic illnesses, psychiatric disorders, cerebrovascular conditions, neoplastic diseases, or other headache types were excluded from the study. Additionally, 102 healthy subjects who met the inclusion and exclusion criteria were included. 

.

Results:

The algorithm-based information gain method for feature reduction had the best performance among all methods, with the first-order, gray-level size zone matrix, and gray-level co-occurrence matrix classes being the dominant feature classes. The machine learning model correctly classified 82.4% of migraine patients from healthy subjects. Within the migraine group, 74.1% of the episodic migraine-probable migraine patients and 90.5% of the chronic migraine patients were accurately classified. No significant difference was found between probable migraine and episodic migraine patients in terms of the periaqueductal gray region radiomics features. The kNN algorithm showed the best performance for classifying episodic migraine-probable migraine subtypes, while the Random Forest algorithm demonstrated the best performance for classifying the migraine group and chronic migraine subtype.

.

Conclusion:

A radiomics-based machine learning model, utilizing standard MR images obtained during the diagnosis and follow-up of migraine patients, shows promise not only in aiding migraine diagnosis and classification for clinical approach, but also in understanding the neurological mechanisms underlying migraines. 

.

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来源期刊
Ideggyogyaszati Szemle-Clinical Neuroscience
Ideggyogyaszati Szemle-Clinical Neuroscience CLINICAL NEUROLOGY-NEUROSCIENCES
CiteScore
1.30
自引率
0.00%
发文量
40
审稿时长
>12 weeks
期刊介绍: The aim of Clinical Neuroscience (Ideggyógyászati Szemle) is to provide a forum for the exchange of clinical and scientific information for a multidisciplinary community. The Clinical Neuroscience will be of primary interest to neurologists, neurosurgeons, psychiatrist and clinical specialized psycholigists, neuroradiologists and clinical neurophysiologists, but original works in basic or computer science, epidemiology, pharmacology, etc., relating to the clinical practice with involvement of the central nervous system are also welcome.
期刊最新文献
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