Artificial intelligence and machine learning are widely adopted across outsourcing companies like Innovecs, logistics, aviation and many other industries. Multiple market predictions prove it is really so. Thus, International Data Corporation (IDC) claims that the AI global spending will increase to 54,2% reaching $19.1 billion in 2018.
The funding of artificial intelligence in healthcare has also grown immensely. According to the data shared by the UK consulting agency, Accenture, the healthcare market is to invest up to $6.6 billion by 2021 into the AI projects.
This tremendous figure signals that the innovations are badly needed since many healthcare institutions literally got stuck in the end of XIX century using outdated programs and medical devices.
Luckily, much has already been done to improve the existing workflows, treatment procedures, diagnostics, and more. Let’s take a quick tour into the past and present achievements made.
A Brief Timeline of Artificial Intelligence in Healthcare
Artificial intelligence in healthcare and its impact are actively discussed by medical experts and software engineers. No wonder that the events dedicated to the AI role in healthcare are growing in number.
Thus, the AMIA 2018 Annual Symposium threw light on applying AI to prevent drug diversion, while Stanford University is to hold Machine Learning for Healthcare 2018 and discuss how to turn complex medical data into actionable knowledge using NLP (natural language processing).
But AI wasn’t as popular several decades ago.
Dendral was the very first program with a problem-solving feature developed back in the 1960s. It became the basis for MYCIN, the AI predecessor in healthcare locating serious bacterial infections. Despite its obvious benefit, MYCIN was never applied. And this happened not because of its bad performance. There was no one to take responsibility for the program failure to make the right diagnosis.
As years went by, the new theories and approaches were developed. Once the intelligent computing appeared, there were a few major improvements made:
- data processing speed-up;
- medical devices and systems improvement;
- genome sequencing databases enrichment;
- artificial intelligence and machine learning technologies further development;
Today, many world-famous healthcare companies use AI for the development of the cutting-edge solutions. And the major market players are still very familiar: IBM, Microsoft, and Google. Here is just a quick overview of what they are working on:
- IBM applies AI to create solutions for cancer and chronic diseases treatment as well as for the development of new medications;
- Microsoft conducts an in-depth research on how AI can help predict cancer treatment reactions and develops programmable cells;
- Google creates a platform that detects health risks for patients based on the mobile software collected data;
Sure thing, not only leading corporations come up with AI project ideas. Startups and outsourcing agencies belong to the list too. Thus, a UK-based startup BenevolentAI has just raised an impressive $115 million amount to discover new treatment for rare cancers and other severe diseases.
The question is where else AI can be of help in addition to the new drug discoveries? We have listed some widespread applications below.
Main Uses of Artificial Intelligence in Healthcare
Machine learning technologies in healthcare use specific algorithms and software tools to reach the human-like cognition. These technologies are further applied to diagnostics and treatments and go farther than that.
- Data Management
AI has powerful capabilities in data processing. That is why researchers think of applying the AI-based software for collecting, managing, and storing clinical trials data. This systematic approach will contribute much to the development of new effective drugs.
- Automation of Processes
Healthcare specialists spend too much time doing routine tasks instead of paying more attention to patients. The AI software can easily handle this monotonous work and manage administrative tasks like training, billing, processing enrollments, and many more.
- Treatment plan design
By analyzing the input data as deeply and thoroughly as no human can, AI can help create individual treatment plans for every patient.
- Discovering New Medications
Strong analytical features can be used to create new drugs and combine ingredients in the most beneficial way. The drug development can cost a fortune and take years, but with AI it can be less time-consuming and more cost-effective.
- Health Monitoring
Health trackers have gained a sky-high popularity. When powered by AI, these devices can turn into good medical assistants by sharing precise reports on patient health indicators.
- Online consultations
By processing a patient medical history and current health condition, AI can provide some basic online consultations or serve as a virtual nurse.
- Genetic-based diagnosis
DNA is a bottomless source of information that may be hard for a human to explore. But a sophisticated AI is powerful enough to analyze the data and predict possible diseases.
This list is not exhaustive, of course. The future will show what other AI applications in healthcare can be in demand, which means that software development outsourcing companies should expand this expertise too.
- Artificial Intelligence Development Outsourcing
An idea to create a project based on artificial intelligence development should never be abandoned since these ideas shape our future. Machine learning technologies are already mature enough, so the only remaining question is how to choose a software development company to turn your idea into reality.
When it comes to choosing a healthcare software development company, pay close attention to client testimonials, project portfolio, team qualifications, security policy and pricing.
In order to save budget and get excellent service, consider the outsourcing option for implementing artificial intelligence & machine learning projects. Outsourcing companies from Eastern Europe have proven to provide their clients with high-quality solutions. So making the right choice will not take too long.
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