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首页> 外文期刊>Brain Informatics >The role of artificial intelligence and machine learning in harmonization of high-resolution post-mortem MRI (virtopsy) with respect to brain microstructure
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The role of artificial intelligence and machine learning in harmonization of high-resolution post-mortem MRI (virtopsy) with respect to brain microstructure

机译:人工智能和机器学习在高分辨率脑部微观结构验尸MRI(虚拟)协调中的作用

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Abstract Enhanced resolution of 7?T magnetic resonance imaging (MRI) scanners has considerably advanced our knowledge of structure and function in human and animal brains. Post-industrialized countries are particularly prone to an ever-increasing number of ageing individuals and ageing-associated neurodegenerative diseases. Neurodegenerative diseases are associated with volume loss in the affected brain. MRI diagnoses and monitoring of subtle volume changes in the ageing/diseased brains have the potential to become standard diagnostic tools. Even with the superior resolution of 7?T MRI scanners, the microstructural changes comprising cell types, cell numbers, and cellular processes, are still undetectable. Knowledge of origin, nature, and progression for microstructural changes are necessary to understand pathogenetic stages in the relentless neurodegenerative diseases, as well as to develop therapeutic tools that delay or stop neurodegenerative processes at their earliest stage. We illustrate the gap in resolution by comparing the identical regions of the post-mortem in situ 7 T MR images (virtual autopsy or virtopsy) with the histological observations in serial sections through the same brain. We also described the protocols and limitations associated with these comparisons, as well as the necessity of supercomputers and data management for “Big data”. Analysis of neuron and/or glial number by using a body of mathematical tools and guidelines (stereology) is time-consuming, cumbersome, and still restricted to trained human investigators. Development of tools based on machine learning (ML) and artificial intelligence (AI) could considerably accelerate studies on localization, onset, and progression of neuron loss. Finally, these observations could disentangle the mechanisms of volume loss into stages of reversible atrophy and/or irreversible fatal cell death. This AI- and ML-based cooperation between virtopsy and histology could bridge the present gap between virtual reality and neuropathology. It could also culminate in the creation of an imaging-associated comprehensive database. This database would include genetic, clinical, epidemiological, and technical aspects that could help to alleviate or even stop the adverse effects of neurodegenerative diseases on affected individuals, their families, and society.
机译:摘要7?T磁共振成像(MRI)扫描仪的高分辨率提高了我们对人和动物大脑的结构和功能的了解。工业化后的国家特别容易出现衰老人数和与衰老相关的神经退行性疾病的人数不断增加的情况。神经退行性疾病与受影响的大脑体积减少有关。 MRI诊断和监视衰老/患病的大脑中细微的体积变化可能会成为标准的诊断工具。即使使用7?T MRI扫描仪具有较高的分辨率,仍然无法检测到包括细胞类型,细胞数量和细胞过程在内的微观结构变化。为了了解无情的神经退行性疾病的致病阶段,以及开发延缓或停止神经退行性过程最早的治疗工具,必须掌握微观结构变化的起源,性质和进展。我们通过比较死后原位7 T MR图像的相同区域(虚拟尸体解剖或虚拟化)与通过同一大脑的连续切片中的组织学观察结果来说明分辨率的差距。我们还描述了与这些比较相关的协议和局限性,以及超级计算机和“大数据”数据管理的必要性。使用大量的数学工具和指南(立体学)来分析神经元和/或神经胶质数是耗时,麻烦的,并且仍然仅限于训练有素的人类研究者。基于机器学习(ML)和人工智能(AI)的工具的开发可以大大加快有关神经元丢失的定位,发作和进展的研究。最后,这些观察结果可以将体积损失的机制弄清楚为可逆性萎缩和/或不可逆性致命细胞死亡阶段。虚拟机和组织学之间基于AI和ML的合作可以弥补虚拟现实与神经病理学之间的空白。它还可能最终创建与影像相关的综合数据库。该数据库将包括遗传,临床,流行病学和技术方面的信息,可以帮助减轻甚至阻止神经退行性疾病对受影响的个人,家庭和社会的不利影响。

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