Artificial intelligence (AI) enables computer systems to do human brain tasks in various fields and all aspects of daily life. AI has resulted in a much-needed, and significant advance in the health sector, generally referred to as electronic health (eHealth) and medical health (mHealth).
Many applications leverage big data, including all essential data about medical health and illnesses that a model can access during execution or disease diagnosis, frequently providing deep machine learning and AI methodologies. Hospitals, healthcare providers, insurance companies, and researchers worldwide use this data. However, because of one simple factor: being human, obtaining crucial data can be a huge barrier for people working in the healthcare system.
The area of medicine evolves with each new disease. Unfortunately, the COVID-19 pandemic has shown several ways the healthcare system was unprepared to handle such a crisis.
This trend has been aided by technology, which has enabled the rapid creation of vaccines and drugs. Machine learning and AI were used to examine large volumes of data for patterns successfully. These were then integrated into existing data, assisting with further investigation.
COVID-19 is also a great example of how big data technology will evolve. There has been a lot to understand during the pandemic regarding research outcomes, the variety of treatment, deficiencies of medical infrastructure, and the virus itself.
Big data processing has substantially aided throughout the covid-19 outbreak thanks to our technology infrastructure. Predictive analysis of the coronavirus spreading in China helped forecast how it could spread over the world. The pandemic was forecasted using data analysis and predictive methods to foretell second waves in various countries. Data points like healthcare infrastructure and population density could also be utilized to calculate the effect.
AI technology models are now continually improving their power to foresee how diseases will affect regions. Furthermore, these models aid in understanding how chronic diseases grow. Individualized medical care for persons with chronic diseases has been made possible due to this innovation based on individual characteristics such as DNA, lifestyle, and the surrounding environment.
AI is also being used to improve imaging tools for disease detection. For instance, human error can frequently cause the smallest changes in CT or MRI scans to be missed. Over time, gathering data from throughout the world can help eliminate these mistakes. It also helps to complete a diagnosis more quickly, saving time and energy.
Manufacturing automation allows for more precision in products, equipment, and treatments, reducing the risk of errors that can occur with a manual operation. These core technologies also open up the possibility of integrating technologies like robotics and telemedicine to provide healthcare even in remote areas.
This global crisis has also accelerated medical technology innovation, forcing the development of new worldwide alliances. Furthermore, covid-19 also revealed medical flaws. Now the future of medicine is dependent on technology to find and correct those errors. As a result, future innovation is expected to concentrate on healthcare procedures, medicine development efficiency, improved security technologies, and overall convenience.
Some of the forthcoming technologies in development include nanomedicine, better health trackers, and having your lab on a chip. Technological advancements are aimed towards reducing the world disease impact. Technology is gradually providing more control of one’s health and a proactive approach to the future of medicine through smart devices.
There is no definitive answer as to whether AI can fix all of the world’s diseases. Still, there is little hope that it will revolutionize the industry and significantly help healthcare.