Exploring Health Informatics in the Battle against Drug Addiction: Digital Solutions for the Rising Concern.
Shakila Jahan ShimuSrushti Moreshwar PatilEbenezer DadzieTadele TesfayePoorvanshi AlagGniewko WięckiewiczPublished in: Journal of personalized medicine (2024)
Drug addiction is a rising concern globally that has deeply attracted the attention of the healthcare sector. The United States is not an exception, and the drug addiction crisis there is even more serious, with 10% of adults having faced substance use disorder, while around 75% of this number has been reported as not having received any treatment. Surprisingly, there are annually over 70,000 deaths reported as being due to drug overdose. Researchers are continually searching for solutions, as the current strategies have been ineffective. Health informatics platforms like electronic health records, telemedicine, and the clinical decision support system have great potential in tracking the healthcare data of patients on an individual basis and provide precise medical support in a private space. Such technologies have been found to be useful in identifying the risk factors of drug addiction among people and mitigating them. Moreover, the platforms can be used to check prescriptions of addictive drugs such as opioids and caution healthcare providers. Programs such as the Prescription Drug Monitoring Program (PDMP) and the Drug and Alcohol Services Information Systems (DASIS) are already in action in the US, but the situation demands more in-depth studies in order to mitigate substance use disorders. Artificial intelligence (AI), when combined with health informatics, can aid in the analysis of large amounts of patient data and aid in classifying nature of addiction to assist in the provision of personalized care.
Keyphrases
- healthcare
- electronic health record
- artificial intelligence
- clinical decision support
- adverse drug
- big data
- public health
- mental health
- risk factors
- health information
- machine learning
- drug induced
- deep learning
- newly diagnosed
- quality improvement
- ejection fraction
- palliative care
- health insurance
- working memory
- prognostic factors
- patient reported outcomes
- affordable care act
- human health
- social media