Artificial Intelligence in Healthcare: the Ultimate Guide
Mohamed Kahna
Digital Health Expert | Medical Marketing Manager| Surgical Technologist | Medical Innovator || Helping doctors, nurses & medical companies THRIVE??
Artificial Intelligence (AI) in healthcare is finding numerous applications across the different spectrums of healthcare and is all set to transform the way we diagnose and treat illness in the days to come.
The juxtaposing of big data with AI via machine learning and natural language processing has led to the development of tools to improve clinical care, advance medical research and improve overall care efficiency.
This comprehensive guide is all you need to know about Artificial Intelligence in healthcare, its working, applications, future?healthcare technology trends?and challenges in its adoption in the healthcare industry.
What is Artificial Intelligence and how is it impacting the healthcare industry?
Artificial intelligence is the use of specific algorithms to train computers for completing specific tasks by processing a large amount of data and by recognizing specific patterns in the data.
These algorithms make it possible for the machined to learn from experience, compute the input data and process it and perform tasks in an almost human-like manner.
It thus enables the machines to mimic the cognitive functions typical to the human mind like problem-solving, reasoning and learning.
David B. Agus, MD, a professor of medicine and engineering at the University of Southern California Keck School of Medicine and Viterbi School of Engineering, believes in the far-reaching impact that AI-powered algorithms would have the healthcare sector. “We have lots of data that we’ve been collecting over decades,”?he says. “For the first time, computing power allows us to use the data in a way to benefit patients.”
“What’s exciting is AI allows doctors to personalize care, something we’ve dreamed of doing for decades”?Agus told webmd.
Applications of AI in Healthcare
AI has already entered our day to day lives in such a manner that we don’t even notice it.
From chatbots on eCommerce websites to voice assistants on our smartphones, AI consultants are rapidly making machines learn what humans do and enabling them to do those tasks more effectively and rapidly.
In the healthcare sector too, AI tools have found numerous applications across the different stages:
1. Preventive Medicine
“Health is not merely the absence of disease or infirmity, it is a state of complete physical, mental and social well being” – World Health Organization
AI with the use of connected medical devices and IoMT has the biggest potential role in ensuring that people stay healthy.
For the general population:?AI is already helping people in taking care of their own health by maintaining a healthier lifestyle.
An increasingly large number of people are choosing to adopt fitness and other health wearables to track their health statistics on a daily basis.
Collection and analysis of this health data and its supplementation with health information provided by the patient through health apps has the potential to offer a unique perspective into individual and population health.
For medical practitioners:?AI technology is providing healthcare professionals an insight into the day-to-day patterns and needs of the people they care for. This enables them to provide better guidance, feedback and support to their patients.
The data generated and collected is not computable by humans in isolation. The use of AI algorithms by?healthcare AI development companies?to make sense of the vast data not only saves precarious human time and effort but also makes the process more efficient.
Software development companies can create dashboards that can present the data visually which can save a ton of time from manual data-crunching.?
For researchers:?Collection of crowd-sourced?medical data is something that the companies focusing on healthcare research are focused on. Data from various mobile devices is being pooled and aggregated in order to gain access to live health stats.
Real-life applications
2. Early Detection of Diseases
The proliferation of consumer wearables combined with the computation power of AI has enabled doctors and other caregivers to better monitor the patient and detect potentially life-threatening episodes at an earlier, more treatable stage.
“There’s a very good chance that wearable data will have a major impact on healthcare because our care is very episodic and the data we collect is very coarse,”?says Omar Arnaout, MD, co-director of the computation neuroscience outcomes center. “By collecting granular data in a continuous fashion, there’s a greater likelihood that the data will help us take better care of patients.”
Here are some applications of the same that are currently being used in the healthcare space.
Detection of Cardiac conditions:?Fitness and other health wearable devices can be used to detect not just the heart rate but also monitor patient’s ECG. This is instrumental in detection and earlier diagnosis of underlying cardiac conditions.
Detection of breast cancer:?AI is being used currently to analyze mammography.?It has been?discovered?that the analysis rate is 30 times faster than that of a human and has an accuracy of 99 percent.
This not only reduces the chances of possible misdiagnosis, but it also reduces the need to perform invasive biopsies to reach the diagnosis.
Infection trend prediction:?Sepsis?is one of the leading causes of hospital deaths in the US and the diagnosis doesn’t usually happen until the development of organ failure.
Application of AI in the detection of sepsis can go a long way in decreasing the patient mortality rate. Work is currently underway to develop a computer algorithm that analyzes the patient vitals and metabolic levels from the patient’s EHRs to detect if they have a likelihood of getting sepsis.
Disease prevalence trends:?Patients are increasingly relying on search engines like Google to check their symptoms online before paying a visit to the doctor. The use of AI to monitor this search and draw conclusions from it can lead to early intervention in possible disease outbreaks in the population.
Google had tried to do this with Google flu trends back in 2008 but failed due to lack of streamlined data and numerous inconsistencies.
With progress in computing and AI in the last decade, this can turn to be a big asset in early detection of infectious diseases and preventing their outbreaks.
Turning Electronic health records into risk predictors:?Patient’s medical records are a data goldmine but sorting through the data and coming up with useful results is a task that would result in a lot of human time and effort going waste. This is where AI’s computing power comes to play.
EHR analytics tools that employ deep learning techniques have been used to unearth valuable patient data by using risk scoring and stratification tools resulting in predictive analytics that lets the machine learning algorithms determine the patient’s risk to acquire chronic diseases.
Real-life applications
3. Efficient Diagnosis
Artificial Intelligence uses both structured and unstructured data for obtaining its results. The structured data includes genomic studies, images (radio diagnostic and pathological), readings and recordings from medical devices, etc.
This data is then clustered using machine learning techniques to infer?diagnosis?and possible disease outcomes.
The unstructured data can be in the form of the physician’s notes, patient medical records in the form of EHRs, lab reports, discharge summaries, etc.
AI makes use of natural language processing for extracting the relevant information from the sets of unstructured data in order to assist in clinical decision making, alerting treatment arrangement, monitoring adverse reactions etc.
Use of AI can help in coming up with a diagnosis in a more effective manner by using both structured and unstructured data at a much faster rate.
The major advantage of AI for reaching a diagnosis is that all its decisions are solely evidence based and free of cognitive bias which may result in human diagnosis. Let’s take a look at the applications of AI in diagnosis of diseases.
Diagnosis using radiographs:?Use of AI for image analysis of radiological images obtained from MRI machines, CT scans and X-rays not only resulted in diagnosis that were at par with a human radiologist, the results obtained were much faster as well.
Application of AI in radiodiagnosis is meant to be an adjuvant to the radiologist, who can use AI for routine cases and utilize his/her resources for more complicated cases.
Use of AI in oncology:?AI is being trained to recognize and identify skin lesions for diagnosis of skin cancer based on facial recognition techniques. As mentioned above, it is used in diagnosis of breast cancers by mammograph analysis.
Virtual biopsies by using AI are harnessing the image based algorithms to make advances in the field of radionomics.
This would allow clinicians to develop a more accurate understanding of tumour behaviour as a whole and give them the ability to better define the aggressiveness of tumours and select the treatment that would result in the best outcomes
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Application of AI in pathology:?Pathological diagnosis involves examination of the section of tissue under a microscope. Incorporation of deep learning to train an algorithm for image recognition would provide more accurate diagnosis when combined with human expertise.
Analytics of the large digital images at the pixel level can help in detection of pathological lesions which may escape the human eye and lead to a more efficient diagnosis.
Real life applications
4. Medical Decision Making
The use of AI algorithms to support clinical decision-making, early alerting and risk scoring ensures the delivery of quality clinical care.
AI systems do not suffer from human deficits like decision fatigue and alarm fatigue so the use of these to determine the clinical workflow and its management would result in more efficient patient care.
Administrative workflow management:?Leveraging AI for automation of administrative workflow via custom software development ensures that the care providers like doctors and nurse practitioners save time on routine tasks and can prioritize on urgent matters instead.
Management of routine tasks like the entry of medical notes in patient’s charts can be done using voice-to-text transcriptions that can save valuable time.
Predictive analysis:?The patient data collected in form of electronic medical records and those obtained from the wearable devices gives the physician access to valuable data about the patient as well as the population cohort the patient belongs to.
Computation of this data using AI algorithm helps develop the patient profile and build predictive models to effectively anticipate, diagnose and treat the diseases.?
Clinical decision making:?Having access to complete patient data is a boon for clinical decision making. It also results in development of a treatment model that caters to the needs of the individual patient which is different from the generic approach traditionally adopted.
Real life applications
5. Treatment
AI can help clinicians in having a more comprehensive approach for disease management, result in better coordination of care plans and ultimately help patients to become more compliant with their long-term treatment programs.
It is also playing a pivotal role in providing care through?telemedicine?and?remote patient monitoring.
Here are some of the applications of the same.
Virtual nursing assistants:?Work is currently under progress to use AI for development of virtual nurses that would be available at the patient’s bedside throughout the treatment. They are used to monitor the patient stats and provide answers to the routine questions.
They establish channels of communication between the doctors and the patients at regular intervals and thus help prevent unnecessary hospital visits, saving costs.
The nurse avatars are voice based and use verbal communication to converse with the patients.
Voice to text transcriptions:?A significant amount of time is spent by healthcare providers in entering medical or surgical notes in patient’s health records.
AI-enabled voice to text transcription of these notes would increase the time spent in patient care and improve clinical effectiveness.
Precision Medicine:?Having the relevant patient data at the clinician’s disposal is a step in the right direction for development of precision medicine.
It enables the physicians to take medical decisions catering to the individual patient and create specific treatment plans for each patient.
Real life applications
6. Research
Real life applications
7. Robotics and Chatbots
Real life applications
The collaboration of big data, AI and robotics in the health sector will result in development of intelligent medical solutions. These would be used to provide both evidence and outcome based care with the focus on preventative care.
Challenges to Adoption of AI in Healthcare
The adoption of AI in the field of healthcare opens up a number of possibilities but they come with their own set of challenges as well.
1. Initial Adoption Issues
In order to attract stakeholders for investing in AI, successful case studies need to be documented and presented but in order to come up with case studies, healthcare companies need to be on board.
As with any new technology, there is an initial hesitation to adoption in the market with both healthcare organizations and users having concerns to its applicability and feasibility.
2. Black Box Difficulty
Machine learning and deep learning lack the ability to give the answer to “why” questions. The logic behind the conclusion obtained isn’t justified which results in lack of confidence in the results achieved.
How the system came up with a diagnosis or recommendation is an important part of the treatment plan and hence at the end of the day, the final word would be that of the physician.
3. Data Privacy Concerns
Patient health stats constitute extremely sensitive data and proper mechanisms need to be in place to ensure the safety of it from external attacks.
4. Stakeholder Complexities
Everyone in the healthcare industry, including the patients, healthcare workers, pharma companies, insurance companies, healthcare organization act as stakeholders in the adoption of AI.
Resistance to the technology at any level would lead to issues with the incorporation of the technology as a whole.?
5. Regulatory Compliance
Patient data collection is subject to a number of laws such as?HIPAA?and incorporation of AI is subject to approvals from organizations such as the FDA to ensure the upkeep of the federal standards.
Sharing of data across various databases in order to be analyzed by AI algorithms poses a challenge in terms of HIPAA compliance.