Emotional Design Framework for Pediatric Home Medical Devices Validated Through Machine Learning
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Research Center of Computing & Biomedical Informatics © 2022, Lahore, Pakistan.
Abstract
The rising use of the pediatric home medical devices has been the subject of discussion which
involved the application of user-oriented and empathetic design methods. The traditional medical
devices are mainly oriented towards the performance of functionality, disregarding emotional aspects
of the pediatric users, this may result into anxiety, decreased usability and improper use of the device.
To overcome this shortcoming, it is in this context that this paper introduces the ED-PMD framework
(Emotional Design Pediatric Medical Devices) a new concept that would combine both the concepts of
emotional design and machine learning to create a new framework. The framework proposed is based
on structured interaction information, such as age, time of interaction, rate of error, use patterns, and
behavioral cues, to generate emotional states, such as comfort, anxiety, and neutral behavior, prediction.
An all-encompassing methodology based on data preprocessing, feature engineering, and trained
machine learning models, such as Decision Tree, Support Vector machine (SVM) and Random Forest
are created. One of them, the Random Forest model, has better results because it can process the more
complex behavioral patterns, and decreases overfitting. As a performance metric, the performance of
the framework can be confirmed by the analysis of the confusion matrix and visual interpretation of
results (heatmaps and accuracy-loss curves). The findings reveal that the suggested approach is reliable
and strong, which is proved by their high classification and low rates of misclassification. Moreover,
post-processing optimization, in turn, increases model stability and convergence behavior. The
suggested ED-PMD framework will allow designing adaptable and emotionally intelligent medical
devices capable of responding dynamically to the needs of users. The framework is associated with
enhancing the quality of interaction, decreasing anxiety levels, and increasing the level of usability, that
leads to improved care outcomes and satisfaction of users. This study explains the significance of
incorporating emotional intelligence into medical technology and offers a scalable base upon which the
next-generation health care equipment design should be founded.
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Zhenyu Gao, & Mohd Najib bin Abdullah Sani. (2026). Emotional Design Framework for Pediatric Home Medical Devices Validated Through Machine Learning . Journal of Computing & Biomedical Informatics, 10(02). https://doi.org/10.56979/1002/2026/1331
