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疑似肾性血小板减少症(较常见新疾病)多例及脑研究——溶血性尿毒综合征、CPM文献重新分析及其它

World Latest Medicine Information(2019)

Cited 1|Views22
Abstract
目的 为优化血小板减少的鉴别诊断,论证临床中肾性血小板减少症的存在.方法 重新分析溶血性尿毒综合征(HUS)等文献病例的客观资料,寻找肾性血小板减少症存在的证据.结果 从"HUS"文献中发现疑似肾性血小板减少症数例,另外5篇文献的总计91例尿毒症并发肾性贫血患者,经我们分析约半数疑似肾性血小板减少.结论 肾性血小板减少症(以肾脏分泌血小板生成素减少为主要原因)理论上推测其存在,实践上有我们揭示的临床病例群支持,应该是存在的;查新结果证实肾性血小板减少症系笔者提出的新疾病;此外:(1)对感染后溶血性尿毒综合征患者加用"血必净"可能取得更好疗效;(2)意识内容的物质载体可能是暗能量;丘脑可能是意识内容的整合中枢;腺苷及其受体可能是神经-内分泌网络的交汇点;纹状体有可能有促进震颤症状的功能;(3)加州大学脑桥中央髓鞘溶解症(CPM)文献及北京协和医院文献漏诊急性梗阻性化脓性胆管炎;武汉大学人民医院CPM文献漏诊Wernicke脑病.
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  • Pretraining has recently greatly promoted the development of natural language processing (NLP)
  • We show that M6 outperforms the baselines in multimodal downstream tasks, and the large M6 with 10 parameters can reach a better performance
  • We propose a method called M6 that is able to process information of multiple modalities and perform both single-modal and cross-modal understanding and generation
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