Background
Type: Article

Isfahan Artificial Intelligence Event 2023: Drug Demand Forecasting

Journal: Journal Of Medical Signals And Sensors (22287477)Year: 1 January 2025Volume: 15Issue:
Jahani M.Zojaji Z.aMontazerolghaem A.a Palhang M. Golkarnoor A. Safaei A.A. Bahak H. Saboori P. Halaj B.S.
GoldDOI:10.4103/jmss.jmss_59_24Language: English

Abstract

Background: The pharmaceutical industry has seen increased drug production by different manufacturers. Failure to recognize future needs has caused improper production and distribution of drugs throughout the supply chain of this industry. Forecasting demand is one of the basic requirements to overcome these challenges. Forecasting the demand helps the drug to be well estimated and produced at a certain time. Methods: Artificial intelligence (AI) technologies are suitable methods for forecasting demand. The more accurate this forecast is the better it will be to decide on the management of drug production and distribution. Isfahan AI competitions-2023 have organized a challenge to provide models for accurately predicting drug demand. In this article, we introduce this challenge and describe the proposed approaches that led to the most successful results. Results: A dataset of drug sales was collected in 12 pharmacies of Hamadan University of Medical Sciences. This dataset contains 8 features, including sales amount and date of purchase. Competitors compete based on this dataset to accurately forecast the volume of demand. The purpose of this challenge is to provide a model with a minimum error rate while addressing some qualitative scientific metrics. Conclusions: In this competition, methods based on AI were investigated. The results showed that machine learning methods are particularly useful in drug demand forecasting. Furthermore, changing the dimensions of the data features by adding the geographic features helps increase the accuracy of models. © 2025 Journal of Medical Signals & Sensors.


Author Keywords

Drug demand forecastingIsfahan artificial intelligence competitionsSupply chain management

Other Keywords

Articleartificial intelligencebenchmarkingcompetitionconvolutional neural networkdeep neural networkdrug industrydrug manufacturedrug marketingdrug useforecastinghumanmachine learningperformance indicatorrecurrent neural networkshort term memorysupply chainsupply chain management