Analysis of Unstructured Text-Based Data Using Machine Learning Techniques: The Case of Pediatric Emergency Department Records in Nicaragua

2019 ◽  
pp. 107755871984412
Author(s):  
Giulia Lorenzoni ◽  
Silvia Bressan ◽  
Corrado Lanera ◽  
Danila Azzolina ◽  
Liviana Da Dalt ◽  
...  
Author(s):  
Sofia Benbelkacem ◽  
Farid Kadri ◽  
Baghdad Atmani ◽  
Sondès Chaabane

Nowadays, emergency department services are confronted to an increasing demand. This situation causes emergency department overcrowding which often increases the length of stay of patients and leads to strain situations. To overcome this issue, emergency department managers must predict the length of stay. In this work, the researchers propose to use machine learning techniques to set up a methodology that supports the management of emergency departments (EDs). The target of this work is to predict the length of stay of patients in the ED in order to prevent strain situations. The experiments were carried out on a real database collected from the pediatric emergency department (PED) in Lille regional hospital center, France. Different machine learning techniques have been used to build the best prediction models. The results seem better with Naive Bayes, C4.5 and SVM methods. In addition, the models based on a subset of attributes proved to be more efficient than models based on the set of attributes.


2016 ◽  
Vol 23 (4) ◽  
pp. 671-680 ◽  
Author(s):  
Yizhao Ni ◽  
Andrew F Beck ◽  
Regina Taylor ◽  
Jenna Dyas ◽  
Imre Solti ◽  
...  

Abstract Objective (1) To develop an automated algorithm to predict a patient’s response (ie, if the patient agrees or declines) before he/she is approached for a clinical trial invitation; (2) to assess the algorithm performance and the predictors on real-world patient recruitment data for a diverse set of clinical trials in a pediatric emergency department; and (3) to identify directions for future studies in predicting patients’ participation response. Materials and Methods We collected 3345 patients’ response to trial invitations on 18 clinical trials at one center that were actively enrolling patients between January 1, 2010 and December 31, 2012. In parallel, we retrospectively extracted demographic, socioeconomic, and clinical predictors from multiple sources to represent the patients’ profiles. Leveraging machine learning methodology, the automated algorithms predicted participation response for individual patients and identified influential features associated with their decision-making. The performance was validated on the collection of actual patient response, where precision, recall, F-measure, and area under the ROC curve were assessed. Results Compared to the random response predictor that simulated the current practice, the machine learning algorithms achieved significantly better performance (Precision/Recall/F-measure/area under the ROC curve: 70.82%/92.02%/80.04%/72.78% on 10-fold cross validation and 71.52%/92.68%/80.74%/75.74% on the test set). By analyzing the significant features output by the algorithms, the study confirmed several literature findings and identified challenges that could be mitigated to optimize recruitment. Conclusion By exploiting predictive variables from multiple sources, we demonstrated that machine learning algorithms have great potential in improving the effectiveness of the recruitment process by automatically predicting patients’ participation response to trial invitations.


2015 ◽  
Vol 33 (8) ◽  
pp. 368-377 ◽  
Author(s):  
ALEXANDER ZLOTNIK ◽  
ASCENSIÓN GALLARDO-ANTOLÍN ◽  
MIGUEL CUCHÍ ALFARO ◽  
MARÍA CARMEN PÉREZ PÉREZ ◽  
JUAN MANUEL MONTERO MARTÍNEZ

2006 ◽  
Author(s):  
Christopher Schreiner ◽  
Kari Torkkola ◽  
Mike Gardner ◽  
Keshu Zhang

2010 ◽  
Author(s):  
Zorash Montano ◽  
Neda Safvati ◽  
Angela Li ◽  
Ilene Claudius ◽  
Jeffrey I. Gold

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