A Machine Learning–Based Fall Risk Assessment Model for Inpatients

2021 ◽  
Vol Publish Ahead of Print ◽  
Author(s):  
Chia-Hui Liu ◽  
Ya-Han Hu ◽  
Yu-Hsiu Lin
2021 ◽  
Author(s):  
Sepideh Shokouhi ◽  
Rahul Thapa ◽  
Anurag Garikipati ◽  
Myrna Hurtado ◽  
Gina Barnes ◽  
...  

BACKGROUND Evidence for the best choice of fall risk assessment in long-term care facilities is limited. Short-term fall predictions may enable the implementation of dynamic care practices that specifically address changes in individualized fall risk within senior care facilities. This can be achieved through the use of electronic health records (EHRs), which contain routinely collected information regarding the majority of known fall risk factors. OBJECTIVE We implemented machine learning algorithms that use EHR data to predict a three-month fall risk in residents from a variety of senior care facilities providing different levels of care. METHODS This retrospective study obtained EHR data (2007-2021) from Juniper communities’ proprietary database of 2,785 individuals primarily residing in skilled nursing facilities, independent living facilities, and assisted living facilities across the United States. We assessed the performances of three machine learning (ML)-based fall predictions models and the Juniper Communities fall risk assessment across these different facilities. The ML input features included vital signs and several known risk factors, such as history of fall, comorbidities, and medications. These features were identified within the EHR system based on relevant International Classification of Diseases codes, string searches, or keyword queries. Additional analyses were conducted to examine how the changes in the input features, training datasets, and prediction window affected the performance of these models. RESULTS The extreme gradient boosting (XGB) model exhibited the highest performance with an area under the receiver operating characteristic curve (AUROC) of 0.846, specificity of 0.848, and sensitivity of 0.706 while achieving the best tradeoff in balancing true positive and negative rates. The number of active medications was the most significant feature associated with fall risk, followed by a resident's number of active diseases, and several variables associated with vital signs, including diastolic blood pressure and changes in weight and respiratory rates. The combination of vital signs with traditional risk factors as input features reached a higher prediction accuracy than using either group of features alone. When reducing the prediction window to two months, the XGB model continued to exhibit the highest performance (AUROC = 0.753) in comparison to logistic regression (AUROC = 0.690), multi-layered perceptron (AUROC = 0.678) and Juniper's fall risk assessment (AUROC = 0.582). CONCLUSIONS This study provides novel insights into EHR-based features for predicting short-term fall risk in different types of care facilities. The integration of EHR data into fall prediction models, and particularly vital signs, yields a cost-effective and automated fall risk surveillance. Our XGB model uncovered the impact of a wide range of clinical and pathophysiological fall predictors across heterogenous cohorts while outperforming traditional fall risk assessments and standard ML techniques that are less compatible with EHR data. CLINICALTRIAL N/A


2021 ◽  
Vol 2021 ◽  
pp. 1-6
Author(s):  
Boning Huang ◽  
Junkang Wei ◽  
Yuhong Tang ◽  
Chang Liu

Scientific risk assessment is an important guarantee for the healthy development of an enterprise. With the continuous development and maturity of machine learning technology, it has played an important role in the field of data prediction and risk assessment. This paper conducts research on the application of machine learning technology in enterprise risk assessment. According to the existing literature, this paper uses three machine learning algorithms, i.e., random forest (RF), support vector machine (SVM), and AdaBoost, to evaluate enterprise risk. In the specific implementation, the enterprise’s risk assessment indexes are first established, which comprehensively describe the various risks faced by the enterprise through a number of parameters. Then, the three types of machine learning algorithms are trained based on historical data to build a risk assessment model. Finally, for a set of risk indicators obtained under current conditions, the risk index is output through the risk assessment model. In the experiment, some actual data are used to analyze and verify the method, and the results show that the proposed three types of machine learning algorithms can effectively evaluate enterprise risks.


Author(s):  
Aquib Abtahi Turjo ◽  
Yeaminur Rahman ◽  
S.M. Mynul Karim ◽  
Tausif Hossain Biswas ◽  
Ifroim Dewan ◽  
...  

2010 ◽  
Vol 151 (34) ◽  
pp. 1365-1374 ◽  
Author(s):  
Marianna Dávid ◽  
Hajna Losonczy ◽  
Miklós Udvardy ◽  
Zoltán Boda ◽  
György Blaskó ◽  
...  

A kórházban kezelt sebészeti és belgyógyászati betegekben jelentős a vénásthromboembolia-rizikó. Profilaxis nélkül, a műtét típusától függően, a sebészeti beavatkozások kapcsán a betegek 15–60%-ában alakul ki mélyvénás trombózis vagy tüdőembólia, és az utóbbi ma is vezető kórházi halálok. Bár a vénás thromboemboliát leggyakrabban a közelmúltban végzett műtéttel vagy traumával hozzák kapcsolatba, a szimptómás thromboemboliás események 50–70%-a és a fatális tüdőembóliák 70–80%-a nem a sebészeti betegekben alakul ki. Nemzetközi és hazai felmérések alapján a nagy kockázattal rendelkező sebészeti betegek többsége megkapja a szükséges trombózisprofilaxist. Azonban profilaxis nélkül marad a rizikóval rendelkező belgyógyászati betegek jelentős része, a konszenzuson alapuló nemzetközi és hazai irányelvi ajánlások ellenére. A belgyógyászati betegek körében növelni kell a profilaxisban részesülők arányát és el kell érni, hogy trombózisrizikó esetén a betegek megkapják a hatásos megelőzést. A beteg trombóziskockázatának felmérése fontos eszköze a vénás thromboembolia által veszélyeztetett betegek felderítésének, megkönnyíti a döntést a profilaxis elrendeléséről és javítja az irányelvi ajánlások betartását. A trombózisveszély megállapításakor, ha nem ellenjavallt, profilaxist kell alkalmazni. „A thromboemboliák kockázatának csökkentése és kezelése” című, 4. magyar antithromboticus irányelv felhívja a figyelmet a vénástrombózis-rizikó felmérésének szükségességére, és elsőként tartalmazza a kórházban fekvő belgyógyászati és sebészeti betegek kockázati kérdőívét. Ismertetjük a kockázatbecslő kérdőíveket és áttekintjük a kérdőívekben szereplő rizikófaktorokra vonatkozó bizonyítékokon alapuló adatokat.


2016 ◽  
Vol 34 (1) ◽  
pp. 42-53
Author(s):  
Kyung-Wan Seo ◽  
Jeong-Ok Lee ◽  
Sun-Young Choi ◽  
Min-Jung Park

Author(s):  
C.K. Lakshminarayan ◽  
S. Pabbisetty ◽  
O. Adams ◽  
F. Pires ◽  
M. Thomas ◽  
...  

Abstract This paper deals with the basic concepts of Signature Analysis and the application of statistical models for its implementation. It develops a scheme for computing sample sizes when the failures are random. It also introduces statistical models that comprehend correlations among failures that fail due to the same failure mechanism. The idea of correlation is important because semiconductor chips are processed in batches. Also any risk assessment model should comprehend correlations over time. The statistical models developed will provide the required sample sizes for the Failure Analysis lab to state "We are A% confident that B% of future parts will fail due to the same signature." The paper provides tables and graphs for the evaluation of such a risk assessment. The implementation of Signature Analysis will achieve the dual objective of improved customer satisfaction and reduced cycle time. This paper will also highlight it's applicability as well as the essential elements that need to be in place for it to be effective. Different examples have been illustrated of how the concept is being used by Failure Analysis Operations (FA) and Customer Quality and Reliability Engineering groups.


2013 ◽  
Vol 19 (3) ◽  
pp. 521-527 ◽  
Author(s):  
Song YANG ◽  
Shuqin WU ◽  
Ningqiu LI ◽  
Cunbin SHI ◽  
Guocheng DENG ◽  
...  

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