Investigate how AI and machine learning are transforming healthcare by improving diagnostics, treatment plans, and patient outcomes.
Artificial intelligence is modernizing day by day with a rapid speed in almost every field. Lately it is also observed in healthcare sectors by the integration of AI and machine learning techniques. Most of the professionals are preferring these methods for diagnosis and treatments. We can now say that a revolution is happening, and the healthcare industry is changing with the help of technology and medicine. This will bring a significant improve on patient’s health care. Now let’s delve into the more discussion by providing examples and case studies.
1. Improving Diagnostic
The main aim for AI is to completely bring a change in healthcare sectors and improve the services for diagnosis. By using many corpus and machine learning algorithms, it is become easier for healthcare professionals to analyse medical images, they can be easily interpreted and detected. Through AI Artificial Intelligence and machine learning techniques one can analyse tiniest object which can’t be seen by human eye. We can take Google’s DeepMind as an example as it’s diagnosis medical conditions such as diabetes by analysing medical imaging.
2. Treatment Plans
AI is now introducing customised treatment Plans which a patient can alter accordingly. For example, the IBM Watson is analysing patients data and information and recommending tailored treatment plans. AI is guiding the patients on the basis of their provided information and recommending specific methodologies. All of this is taking us towards the reliable care and enhancing patient’s care with limited adverse effects.
3. Predictive outcomes and early intervention:
AI is getting better with time so we can see more and more innovation. Another aspect of AI in healthcare is that now we can predict potential healthcare risk using AI generated machine learning-powered predictive analytics. For example, there’s a clinic named as Cleveland which is using certain algorithms to determine higher risk of life-threatening conditions of patients and they easily alert doctors and patients to take an action towards the issue. As early detection is the earliest solution to the problem so AI is very beneficial for this purpose.
4. Administrative streamlining:
As AI is helping in the medical issues of patients, it is also making easier the task of medical professionals because AI is assisting them and performing their duties. AI is freeing up medical facilitators by performing duties of administration such s scheduling the appointments and daily routine questions which are being asked by the chatbots and in some cases virtual assistants. Not only this it is also improving patients overall experiences and efficiency of the work.
Case study 1: “PathAI’s impact on pathology”
A Boston based business company is using PathAI which is a machine learning process to diagnose disease related to pathology using slides. Efficiency is seen in the pathology laboratories because of the machine learning techniques. It is also time saving and results are said to be very much reliable.
Case study 2: “ Butterfly’s network Butterfly’s IQ+ and AI in Ultrasound imaging”
A handheld gadget for ultrasound is been using AI algorithm for scanning and imaging purposes. It guides users frequently and provide pictures in real-time . It is a very efficient and portable technology for diagnosis and is very handy. Not only diagnosis it also provides pictures interpretation and write detailed description which is totally automated, it quickly identify pregnancy issues and cardiac irregularities. Butterfly IQ is very portable and very user friendly as it guides on the spot and saves the time of user and is useful in emergency situations, so we can say that it enhances patient outcomes.
This technology is spreading worldwide even in isolated areas where there is less access to cutting-edge imaging. It’s really a revolutionary change and the power of AI Artificial Intelligence extending the reach of healthcare sectors.
Case study 3: “Tempus and Data Driven Oncology”
Tempus is a technological company related to Oncology and it is using AI for efficiency and reliability. With the help of data-driven insights we can see crucial impact of AI on oncology. With the help of machine learning, Tempus improves the diagnosis and treatments of cancer patients and demonstrates their causes and symptoms by interpreting huge amount of dataset, including genomic as well as clinical data.
The developed technology helps medical professionals to provide patient with the best treatment and prevent from life-threatening conditions as early as possible based on unique tumour profiles. Tempus dedication to data driven oncology is demonstrated by the collaboration with researchers and healthcare professionals. This case study mainly focuses on how AI is applied to oncology to help cancer patients and advances cancer care by upgrading treatment methodologies.
Conclusion
AI is now introducing new aspects in medicine and health care, it is revolutionising on daily basis in improving diagnosis, treatment methodologies, patient’s outcomes, and administration streamlining. By analysing all three case studies, we can say that AI in healthcare is bringing a change and enhances the efficiency and reliability. Through this revolution, we can save time, get real-time results, and can get best treatment.