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首页> 外文期刊>Journal of Translational Medicine >Alzheimer's disease biomarker discovery using in silico literature mining and clinical validation
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Alzheimer's disease biomarker discovery using in silico literature mining and clinical validation

机译:利用计算机电子文献挖掘和临床验证发现阿尔茨海默氏病生物标志物

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Background Alzheimer’s Disease (AD) is the most widespread form of dementia in the elderly but despite progress made in recent years towards a mechanistic understanding, there is still an urgent need for disease modification therapy and for early diagnostic tests. Substantial international efforts are being made to discover and validate biomarkers for AD using candidate analytes and various data-driven 'omics' approaches. Cerebrospinal fluid is in many ways the tissue of choice for biomarkers of brain disease but is limited by patient and clinician acceptability, and increasing attention is being paid to the search for blood-based biomarkers. The aim of this study was to use a novel in silico approach to discover a set of candidate biomarkers for AD. Methods We used an in silico literature mining approach to identify potential biomarkers by creating a summarized set of assertional metadata derived from relevant legacy information. We then assessed the validity of this approach using direct assays of the identified biomarkers in plasma by immunodetection methods. Results Using this in silico approach, we identified 25 biomarker candidates, at least three of which have subsequently been reported to be altered in blood or CSF from AD patients. Two further candidate biomarkers, indicated from the in silico approach, were choline acetyltransferase and urokinase-type plasminogen activator receptor. Using immunodetection, we showed that, in a large sample set, these markers are either altered in disease or correlate with MRI markers of atrophy. Conclusions These data support as a proof of concept the use of data mining and in silico analyses to derive valid biomarker candidates for AD and, by extension, for other disorders.
机译:背景阿尔茨海默氏病(AD)是老年人中最普遍的痴呆症形式,但是尽管近年来在机械理解方面取得了进展,但仍然迫切需要进行疾病改良疗法和早期诊断测试。国际上正进行大量努力,以使用候选分析物和各种数据驱动的“组学”方法来发现和验证AD的生物标记。脑脊液在许多方面是脑疾病生物标记物选择的组织,但受患者和临床医生的接受程度的限制,并且人们越来越关注寻找基于血液的生物标记物。这项研究的目的是使用一种新颖的计算机模拟方法来发现AD的一组候选生物标记。方法我们使用计算机技术文献挖掘方法,通过创建从相关传统信息中得出的断言元数据的摘要集,来识别潜在的生物标记。然后,我们通过免疫检测方法对血浆中已鉴定的生物标志物进行直接测定,评估了该方法的有效性。结果使用这种计算机方法,我们确定了25种生物标志物候选物,随后至少有3种生物标志物据报道被AD患者的血液或CSF改变。从计算机方法中可以看出,另外两个候选生物标记是胆碱乙酰基转移酶和尿激酶型纤溶酶原激活剂受体。使用免疫检测,我们显示,在大量样本中,这些标志物要么在疾病中改变,要么与萎缩的MRI标志物相关。结论这些数据支持使用数据挖掘和计算机分析来得出AD以及其他疾病的有效生物标志物候选物的概念证明。

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