Development of Early Prediction Model for Epileptic Seizures

Author(s):  
Anjum Shaikh ◽  
Mukta Dhopeshwarkar
Medicine ◽  
2021 ◽  
Vol 100 (8) ◽  
pp. e24901
Author(s):  
Li Liu ◽  
Lei Dong ◽  
Benping Zhang ◽  
Xi Chen ◽  
Xiaoqing Song ◽  
...  

2021 ◽  
Author(s):  
Celia ALVAREZ-ROMERO ◽  
Alicia MARTÍNEZ-GARCÍA ◽  
Jara Eloisa TERNERO-VEGA ◽  
Pablo DÍAZ-JIMÉNEZ ◽  
Carlos JIMÉNEZ-DE-JUAN ◽  
...  

BACKGROUND Due to the nature of health data, its sharing and reuse for research are limited by legal, technical and ethical implications. In this sense, to address that challenge, and facilitate and promote the discovery of scientific knowledge, the FAIR (Findable, Accessible, Interoperable, and Reusable) principles help organizations to share research data in a secure, appropriate and useful way for other researchers. OBJECTIVE The objective of this study was the FAIRification of health research existing datasets and applying a federated machine learning architecture on top of the FAIRified datasets of different health research performing organizations. The whole FAIR4Health solution was validated through the assessment of the generated model for real-time prediction of 30-days readmission risk in patients with Chronic Obstructive Pulmonary Disease (COPD). METHODS The application of the FAIR principles in health research datasets in three different health care settings enabled a retrospective multicenter study for the generation of federated machine learning models, aiming to develop the early prediction model for 30-days readmission risk in COPD patients. This prediction model was implemented upon the FAIR4Health platform and, finally, an observational prospective study with 30-days follow-up was carried out in two health care centers from different countries. The same inclusion and exclusion criteria were used in both retrospective and prospective parts of the study. RESULTS The prediction model for the 30-days hospital readmission risk was trained using the retrospective data of 4.944 COPD patients. The assessment of the prediction model was performed using the data of 100 recruited (22 from Spain and 78 from Serbia) out of 2070 observed (records viewed) patients in total for the observational prospective study from April 2021 to September 2021. The significant accuracy (0.98) and precision (0.25) of the prediction model generated upon the FAIR4Health platform was observed and, as a result, the generated prediction of 30-day readmission risk was confirmed in 87% of the cases. CONCLUSIONS A clinical validation was demonstrated through the implementation of federated machine learning models on top of the FAIRified datasets from different health research performing organizations, providing an assessment for predicting 30-days readmission risk in COPD patients. This demonstration allowed to state the relevance and need of implementing a FAIR data policy to facilitate data sharing and reuse in health research.


2021 ◽  
Author(s):  
Jing Zhao ◽  
Yuan Zhang ◽  
Jiali Qiu ◽  
Xiaodan Zhang ◽  
Fengjiang Wei ◽  
...  

2020 ◽  
Author(s):  
Mengfan Chen ◽  
Ni Xie ◽  
Zhaoxia Liang ◽  
Tingting Qian ◽  
Danqing Chen

Abstract Objective. To create early prediction models for preterm birth (PTB) based on the Chinese population, combining demographic characteristics and clinical characteristics.Methods. A retrospective study on 15197 pregnant women who were recruited in Obstetrics and Gynecology Hospital of Zhejiang University from January1, 2017 to December 31, 2017. Demographic characteristics and clinical characteristics were collected and were randomly divided into the observation group (80%) and the validation group (20%). Multivariable Logistics regression analysis was performed to develop a risk prediction model in the observation group and the validation group. It was evaluated by the value of area under the curve (AUC) of receiver operating characteristic (ROC). Finally, we got a simple scoring system to present the preterm birth risk. Results. There were 1082 pregnant women (8.9%) developed PTB in the observation group and 316 pregnant women (10.3%) in the validation group. Gravidity, educational level, residence, previous history of PTB, twin pregnancy, pre-gestational diabetes mellitus (type I or II), chronic hypertension, placenta previa, gestational hypertension were significant predictors of future PTB. These factors were all included in the model, the AUC was 0.746 with sensitivity of 61.4% (95%CI: 61.4-66.7%) and specificity of 86.6% (95%CI: 85.2-87.9%) at the threshold score of 8.Conclusion. PTB can be predicted by demographic characteristics and clinical characteristics pre-pregnancy or during pregnancy, thus predicting and preventing PTB as early as possible.


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