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海量資料分析在醫療照護領域的應用

Big Data Analysis in Medical Care

摘要


本文目的是要介紹海量資料分析在醫療領域的應用。海量資料的定義是「超過典型資料庫軟體工具所能擷取、儲存、處理和分析能力的資料」,這定義是非常相對性,會隨著年代、產業與專業領域的不同而有所不同。海量資料分析之所以受到重視,是因為近年來半結構化資料(譬如電郵、臉書、簡訊與網路搜尋紀錄等)與非結構化資料(譬如手機照片與網路影片等)的急速增加,再加上一些資訊技術的突破。本文接著介紹十五種海量資料分析在醫療領域的應用模式,其中比較重要的模式包括:相對療效研究、臨床決策支援系統、醫療資料的透明化、遠端病患監測、進階分析應用於病患側寫、藥物不良反應與再定位分析、個人化醫療、整合相關資料庫、線上平台與社群等。最後再檢視台灣推動醫療相關海量資料分析的利基與障礙。

並列摘要


The aim of this paper was to demonstrate the applications of big data analysis in healthcare. The definition of big data is ”datasets whose size is beyond the ability of typical database software tools to capture, store, manage, and analyze”, which is very relative and differs in different years, industries and professionals. Why the big data analysis matters? It is due to the burgeoning increase of semi-structured data (such as e-mail, cellular phone message, face book and records of web searches etc.) and unstructured data (such as photo and video posted on web etc.) during the past few years and the advance of information technology in managing big data. We then illustrated 15 models of big data analysis in healthcare and most promising models are comparative effectiveness research, clinical decision support systems, transparency about medical data, remote patient monitoring, advanced analytics applied to patient profiles, drug adverse effects and repositioning analysis, personalized medicine, aggregating and synthesizing patient clinical records and claims datasets, and online platforms and communities. Finally, we examined the niches and barriers in developing big data analysis models in healthcare in Taiwan.

被引用紀錄


陳致瑀(2016)。醫療大數據平台之商業模式探討與未來展望〔碩士論文,國立臺灣大學〕。華藝線上圖書館。https://doi.org/10.6342/NTU201600632
林子倫(2017)。大數據與健康研究之公民參與台灣醫學21(1),54-61。https://doi.org/10.6320/FJM.2017.21(1).7
陳聰富、蔡甫昌(2017)。大數據應用於醫學研究之法律議題台灣醫學21(1),34-42。https://doi.org/10.6320/FJM.2017.21(1).5

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