Research and application progress of radiomics in neurodegenerative diseases

Junbang Feng , Ying Huang , Xiaocai Zhang , Qingning Yang , Yi Guo , Yuwei Xia , Chao Peng , Chuanming Li
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Abstract

Neurodegenerative diseases refer to degenerative diseases of the nervous system caused by neuronal degeneration and apoptosis. Usually, the onset of the disease is insidious, and the progression is slow, which can last for several years to decades. Clinical symptoms only appear in the later stages of pathological changes when the degree of nerve cell loss reaches or exceeds a certain threshold. Traditional electrophysiological and medical imaging techniques lack valuable indicators and markers. Therefore, early diagnosis and differentiation are very difficult. Radiomics is a new medical imaging technology merged in recent years, which can extract a large number of invisible features from raw image data with high throughput, and quantitatively analyze the pathological and physiological changes. It demonstrates important potential value in the diagnosis, grading, and prognosis evaluation of NDs. This review provides an overview of the research progress of radiomics in neurodegenerative diseases, emphasizing the process principles of radiomics and its application in the diagnosis, classification, and prediction of these diseases. This helps to deepen the understanding of neurodegenerative diseases and promote early diagnosis and treatment in clinical practice.

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放射组学在神经退行性疾病中的研究与应用进展
神经退行性疾病是指由神经元变性和凋亡引起的神经系统退行性疾病。通常起病隐匿,进展缓慢,可持续数年至数十年。只有在病理变化的后期,当神经细胞丢失的程度达到或超过一定阈值时,才会出现临床症状。传统的电生理和医学影像技术缺乏有价值的指标和标记。因此,早期诊断和鉴别非常困难。放射组学是近年来发展起来的一种新型医学影像技术,它能高通量地从原始图像数据中提取大量不可见的特征,并对病理和生理变化进行定量分析。它在玖玖彩票网正规吗诊断、分级和预后评估方面具有重要的潜在价值。本综述概述了放射组学在神经退行性疾病中的研究进展,强调了放射组学的过程原理及其在这些疾病的诊断、分级和预测中的应用。这有助于加深对神经退行性疾病的认识,促进临床实践中的早期诊断和治疗。
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