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1.
J Am Med Dir Assoc ; : 104945, 2024 Feb 29.
Artigo em Inglês | MEDLINE | ID: mdl-38431264

RESUMO

OBJECTIVES: Pressure ulcers (PUs) are a common and avoidable condition among residents of nursing homes, and their consequences are severe. Reliable and simple identification of high-risk residents is a major challenge for prevention. Available tools like the Braden and Norton scale have imperfect predictive performance. The objective is to predict the occurrence of PUs in nursing home residents from electronic health record (EHR) data. DESIGN: Longitudinal retrospective nested case-control study. SETTING AND PARTICIPANTS: EHR database of French nursing homes from 2013 to 2022. METHODS: Residents who suffered from PUs were cases and those who did not were controls. For cases, we analyzed the data available in their EHR 1 month before the occurrence of the first PU. For controls, we used available data 1 month before an index date adjusted on the delays of PU onset. We conducted a Bayesian network (BN) analysis, an explainable machine learning method, using 136 input variables of potential medical interest determined with experts. To validate the model, we used scores, features selection, and explainability tools such as Shapley values. RESULTS: Among 58,368 residents analyzed, 29% suffered from PUs during their stay. The obtained BN model predicts the occurrence of a PU at a 1-month horizon with a sensitivity of 0.94 (±0.01), a precision of 0.32 (±0.01) and an area under the curve of 0.69 (±0.02). It selects 3 variables: length of stay, delay since last hospitalization, and dependence for transfer. This BN model is suitable and simpler than models provided by other machine learning methods. CONCLUSIONS AND IMPLICATIONS: One-month prediction for incident PU is possible in nursing home residents from their EHR data. The study paves the way for the development of a predictive tool fueled by routinely collected data that do not require additional work from health care professionals, thereby opening a new preventive strategy for PUs.

2.
Stud Health Technol Inform ; 302: 350-351, 2023 May 18.
Artigo em Inglês | MEDLINE | ID: mdl-37203679

RESUMO

An automated ML classifier predicting pressure ulcers one-month before performs better than the reference methods currently used in nursing homes.


Assuntos
Úlcera por Pressão , Humanos , Fatores de Risco , Úlcera por Pressão/prevenção & controle , Casas de Saúde
3.
Stud Health Technol Inform ; 294: 147-148, 2022 May 25.
Artigo em Inglês | MEDLINE | ID: mdl-35612043

RESUMO

This study (This research is funded by Teranga Software and the ANRT CIFRE Grant no2019/1519 for CC.) proposes the use of Bayesian Networks for the prediction of unfavorable health events, and more especially pressure ulcers, in nursing homes. From a database of electronic medical records, we learn an explainable and relevant classifier, which performs better than the scores currently used in nursing homes.


Assuntos
Casas de Saúde , Úlcera por Pressão , Teorema de Bayes , Gerenciamento de Dados , Registros Eletrônicos de Saúde , Humanos
4.
Entropy (Basel) ; 23(8)2021 Jul 21.
Artigo em Inglês | MEDLINE | ID: mdl-34441068

RESUMO

Causal inference methods based on conditional independence construct Markov equivalent graphs and cannot be applied to bivariate cases. The approaches based on independence of cause and mechanism state, on the contrary, that causal discovery can be inferred for two observations. In our contribution, we pose a challenge to reconcile these two research directions. We study the role of latent variables such as latent instrumental variables and hidden common causes in the causal graphical structures. We show that methods based on the independence of cause and mechanism indirectly contain traces of the existence of the hidden instrumental variables. We derive a novel algorithm to infer causal relationships between two variables, and we validate the proposed method on simulated data and on a benchmark of cause-effect pairs. We illustrate by our experiments that the proposed approach is simple and extremely competitive in terms of empirical accuracy compared to the state-of-the-art methods.

5.
Am J Clin Nutr ; 98(6): 1385-94, 2013 Dec.
Artigo em Inglês | MEDLINE | ID: mdl-24172304

RESUMO

BACKGROUND: The ability to identify obese subjects who will lose weight in response to energy restriction is an important strategy in obesity treatment. OBJECTIVE: We aimed to identify obese subjects who would lose weight and maintain weight loss through 6 wk of energy restriction and 6 wk of weight maintenance. DESIGN: Fifty obese or overweight subjects underwent a 6-wk energy-restricted, high-protein diet followed by another 6 wk of weight maintenance. Network modeling by using combined biological, gut microbiota, and environmental factors was performed to identify predictors of weight trajectories. RESULTS: On the basis of body weight trajectories, 3 subject clusters were identified. Clusters A and B lost more weight during energy restriction. During the stabilization phase, cluster A continued to lose weight, whereas cluster B remained stable. Cluster C lost less and rapidly regained weight during the stabilization period. At baseline, cluster C had the highest plasma insulin, interleukin (IL)-6, adipose tissue inflammation (HAM56+ cells), and Lactobacillus/Leuconostoc/Pediococcus numbers in fecal samples. Weight regain after energy restriction correlated positively with insulin resistance (homeostasis model assessment of insulin resistance: r = 0.5, P = 0.0002) and inflammatory markers (IL-6; r = 0.43, P = 0.002) at baseline. The Bayesian network identified plasma insulin, IL-6, leukocyte number, and adipose tissue (HAM56) at baseline as predictors that were sufficient to characterize the 3 clusters. The prediction accuracy reached 75.5%. CONCLUSION: The resistance to weight loss and proneness to weight regain could be predicted by the combination of high plasma insulin and inflammatory markers before dietary intervention.


Assuntos
Restrição Calórica , Resistência à Insulina , Leucócitos/imunologia , Obesidade/dietoterapia , Sobrepeso/dietoterapia , Gordura Subcutânea Abdominal/imunologia , Adulto , Anticorpos Monoclonais/metabolismo , Teorema de Bayes , Biomarcadores/sangue , Biomarcadores/metabolismo , Índice de Massa Corporal , Feminino , Humanos , Insulina/sangue , Interleucina-6/sangue , Cinética , Masculino , Pessoa de Meia-Idade , Obesidade/imunologia , Obesidade/metabolismo , Obesidade/prevenção & controle , Sobrepeso/imunologia , Sobrepeso/metabolismo , Sobrepeso/prevenção & controle , Curva ROC , Prevenção Secundária , Gordura Subcutânea Abdominal/metabolismo , Aumento de Peso , Redução de Peso
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