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An AI-Empowered Home-Infrastructure to Minimize Medication Errors

Muddasar Naeem, Antonio Coronato

2022Journal of Sensor and Actuator Networks27 citationsDOIOpen Access PDF

Abstract

This article presents an Artificial Intelligence (AI)-based infrastructure to reduce medication errors while following a treatment plan at home. The system, in particular, assists patients who have some cognitive disability. The AI-based system first learns the skills of a patient using the Actor–Critic method. After assessing patients’ disabilities, the system adopts an appropriate method for the monitoring process. Available methods for monitoring the medication process are a Deep Learning (DL)-based classifier, Optical Character Recognition, and the barcode technique. The DL model is a Convolutional Neural Network (CNN) classifier that is able to detect a drug even when shown in different orientations. The second technique is an OCR based on Tesseract library that reads the name of the drug from the box. The third method is a barcode based on Zbar library that identifies the drug from the barcode available on the box. The GUI demonstrates that the system can assist patients in taking the correct drug and prevent medication errors. This integration of three different tools to monitor the medication process shows advantages as it decreases the chance of medication errors and increases the chance of correct detection. This methodology is more useful when a patient has mild cognitive impairment.

Topics & Concepts

BarcodeComputer scienceConvolutional neural networkClassifier (UML)Artificial intelligenceCognitive impairmentProcess (computing)Machine learningMedication errorCognitionMedicinePatient safetyEconomic growthOperating systemPsychiatryEconomicsHealth careEEG and Brain-Computer InterfacesCOVID-19 diagnosis using AIMachine Learning in Healthcare
An AI-Empowered Home-Infrastructure to Minimize Medication Errors | Litcius