Predictive analytics and medical malpractice
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Tag | 1 | 2 | Value |
---|---|---|---|
LDR | 00000cab a2200000 4500 | ||
001 | MAP20200018094 | ||
003 | MAP | ||
005 | 20200602122732.0 | ||
008 | 200528e20200601usa|||p |0|||b|eng d | ||
040 | $aMAP$bspa$dMAP | ||
084 | $a6 | ||
100 | $0MAPA20100048740$aFrees, Edward W. | ||
245 | 1 | 0 | $aPredictive analytics and medical malpractice$cEdward W. Frees, Lisa Gao |
520 | $aInsurance as a discipline has long embraced analytics, and market trends signal an even stronger relationship going forward. This article is a case study on the use of predictive analytics in the context of medical errors. Analyzing medical errors helps improve health care systems, and through a type of insurance known as medical malpractice insurance, we have the ability to analyze medical errors using data external to the health care system. In the spirit of modern analytics, this paper describes the application of data from several different sources. These sources give different insights into a specific problem facing the medical malpractice community familiar to actuaries: the relative importance of upper limits (or caps) on insurance payouts for noneconomic damages (e.g., pain and suffering). This topic is important to the industry in that many courts are considering the legality of such limitations. All stakeholders, including patients, physicians, hospitals, lawyers, and the general public, are interested in the implications of removing limitations on caps. This article demonstrates how we can use data and analytics to inform the many different stakeholders on this issue. | ||
650 | 4 | $0MAPA20100048047$aNegligencia | |
650 | 4 | $0MAPA20130017037$aAnálisis predictivos | |
650 | 4 | $0MAPA20080636128$aSeguro de responsabilidad civil profesional sanitario | |
650 | 4 | $0MAPA20080586294$aMercado de seguros | |
650 | 4 | $0MAPA20080592059$aModelos predictivos | |
650 | 4 | $0MAPA20080579258$aCálculo actuarial | |
650 | 4 | $0MAPA20080562250$aError humano | |
700 | 1 | $0MAPA20200012665$aGao, Lisa | |
773 | 0 | $wMAP20077000239$tNorth American actuarial journal$dSchaumburg : Society of Actuaries, 1997-$x1092-0277$g01/06/2020 Tomo 24 Número 2 - 2020 , p. 211-227 |