April 03, 2024 -As healthcare organizations collect more and more digital health data, transforming that information to generate actionable insights has become crucial.
Artificial intelligence (AI) has the potential to significantly bolster these efforts, so much so that health systems are prioritizing AI initiatives this year. Additionally, industry leaders are recommending that healthcare organizations stay on top of AI governance, transparency, and collaboration moving forward.
But to effectively harness AI, healthcare stakeholders need to successfully navigate an ever-changing landscape with rapidly evolving terminology and best practices.
In this primer, HealthITAnalytics will explore some of the most common terms and concepts stakeholders must understand to successfully utilize healthcare AI.
To understand health AI, one must have a basic understanding of data analytics in healthcare. At its core, data analytics aims to extract useful information and insights from various data points or sources. In healthcare, information for analytics is typically collected from sources like electronic health records (EHRs), claims data, and peer-reviewed clinical research.
Analytics efforts often aim to help health systems meet a key strategic goal, such as improving patient outcomes, enhancing chronic disease management, advancing precision medicine, or guiding population health management.
However, these initiatives require analyzing vast amounts of data, which is often time- and resource-intensive. AI presents a promising solution to streamline the healthcare analytics process.
The American Medical Association (AMA) indicates that AI broadly refers to the ability of computers to perform tasks that are typically associated with a rational human being a quality that enables an entity to function appropriately and with foresight in its environment.
However, the AMA favors an alternative conceptualization of AI that the organization calls augmented intelligence. Augmented intelligence focuses on the assistive role of AI in healthcare and underscores that the technology can enhance, rather than replace, human intelligence.
AI tools are driven by algorithms, which act as instructions that a computer follows to perform a computation or solve a problem. Using the AMAs conceptualizations of AI and augmented intelligence, algorithms leveraged in healthcare can be characterized as computational methods that support clinicians capabilities and decision-making.
Generally, there are multiple types of AI that can be classified in various ways: IBM broadly categorizes these tools based on their capabilities and functionalities which covers a plethora of realized and theoretical AI classes and potential applications.
Much of the conversation around AI in healthcare is centered around currently realized AI tools that exist for practical applications today or in the very near future. Thus, the AMA categorizes AI terminology into two camps: terms that describe how an AI works and those that describe what the AI does.
AI tools can work by leveraging predefined logic or rules-based learning, to understand patterns in data via machine learning, or using neural networks to simulate the human brain and generate insights through deep learning.
In terms of functionality, AI models can use these learning approaches to engage in computer vision, a process for deriving information from images and videos; natural language processing to derive insights from text; and generative AI to create content.
Further, AI models can be classified as either explainable meaning that users have some insight into the how and why of an AIs decision-making or black box, a phenomenon in which the tools decision-making process is hidden from users.
Currently, all AI models are considered narrow or weak AI, tools designed to perform specific tasks within certain parameters. Artificial general intelligence (AGI), or strong AI, is a theoretical system under which an AI model could be applied to any task.
Machine learning (ML) is a subset of AI in which algorithms learn from patterns in data without being explicitly trained. Often, ML tools are used to make predictions about potential future outcomes.
Unlike rules-based AI, ML techniques can use increased exposure to large, novel datasets to learn and improve their own performance. There are three main categories of ML based on task type: supervised, unsupervised, and reinforcement learning.
In supervised learning, algorithms are trained on labeled data data inputs associated with corresponding outputs to identify specific patterns, which helps the tool make accurate predictions when presented with new data.
Unsupervised learning uses unlabeled data to train algorithms to discover and flag unknown patterns and relationships among data points.
Semi-supervised machine learning relies on a mix of supervised and unsupervised learning approaches during training.
Reinforcement learning relies on a feedback loop for algorithm training. This type of ML algorithm is given labeled data inputs, which it can use to take various actions, such as making a prediction, to generate an output. If the algorithms action and output align with the programmers goals, its behavior is reinforced with a reward.
In this way, algorithms developed using reinforcement techniques generate data, interact with their environment, and learn a series of actions to achieve a desired result.
These approaches to pattern recognition make ML particularly useful in healthcare applications like medical imaging and clinical decision support.
Deep learning (DL) is a subset of machine learning used to analyze data to mimic how humans process information. DL algorithms rely on artificial neural networks (ANNs) to imitate the brains neural pathways.
ANNs utilize a layered algorithmic architecture, allowing insights to be derived from how data are filtered through each layer and how those layers interact. This enables deep learning tools to extract more complex patterns from data than their simpler AI- and ML-based counterparts.
Like machine learning models, deep learning algorithms can be supervised, unsupervised, or somewhere in between.There are four main types of deep learning used in healthcare: deep neural networks (DNNs), convolutional neural networks (CNNs), recurrent neural networks (RNNs), and generative adversarial networks (GANs).
DNNs are a type of ANN with a greater depth of layers. The deeper the DNN, the more data translation and analysis tasks can be performed to refine the models output.
CNNs are a type of DNN that is specifically applicable to visual data. With a CNN, users can evaluate and extract features from images to enhance image classification.
RNNs are a type of ANN that relies on temporal or sequential data to generate insights. These networks are unique in that, where other ANNs inputs and outputs remain independent of one another, RNNs utilize information from previous layers inputs to influence later inputs and outputs.
RNNs are commonly used to address challenges related to natural language processing, language translation, image recognition, and speech captioning. In healthcare, RNNs have the potential to bolster applications like clinical trial cohort selection.
GANs utilize multiple neural networks to create synthetic data instead of real-world data. Like other types of generative AI, GANs are popular for voice, video, and image generation. GANs can generate synthetic medical images to train diagnostic and predictive analytics-based tools.
Recently, deep learning technology has shown promise in improving the diagnostic pathway for brain tumors.
With their focus on imitating the human brain, deep learning and ANNs are similar but distinct from another analytics approach: cognitive computing.
The term typically refers to systems that simulate human reasoning and thought processes to augment human cognition. Cognitive computing tools can help aid decision-making and assist humans in solving complex problems by parsing through vast amounts of data and combining information from various sources to suggest solutions.
Cognitive computing systems must be able to learn and adapt as inputs change, interact organically with users, remember previous interactions to help define problems, and understand contextual elements to deliver the best possible answer based on available information.
To achieve this, these tools use self-learning frameworks, ML, DL, natural language processing, speech and object recognition, sentiment analysis, and robotics to provide real-time analyses for users.
Cognitive computings focus on supplementing human decision-making power makes it promising for various healthcare use cases, including patient record summarization and acting as a medical assistant to clinicians.
Natural language processing (NLP) is a branch of AI concerned with how computers process, understand, and manipulate human language in verbal and written forms.
Using techniques like ML and text mining, NLP is often used to convert unstructured language into a structured format for analysis, translating from one language to another, summarizing information, or answering a users queries.
There are also two subsets of NLP: natural language understanding (NLU) and natural language generation (NLG).
NLU is concerned with computer reading comprehension, focusing heavily on determining the meaning of a piece of text. These tools use the grammatical structure and the intended meaning of a sentence syntax and semantics, respectively to help establish a structure for how the computer should understand the relationship between words and phrases to accurately capture the nuances of human language.
Conversely, NLG is used to help computers write human-like responses. These tools combine NLP analysis with rules from the output language, like syntax, lexicons, semantics, and morphology, to choose how to appropriately phrase a response when prompted. NLG drives generative AI technologies like OpenAIs ChatGPT.
In healthcare, NLP can sift through unstructured data, such as EHRs, to support a host of use cases. To date, the approach has supported the development of a patient-facing chatbot, helped detect bias in opioid misuse classifiers, and flagged contributing factors to patient safety events.
McKinsey & Company describes generative AI (genAI) as algorithms (such as ChatGPT) that can be used to create new content, including audio, code, images, text, simulations, and videos.
GenAI tools take a prompt provided by the user via text, images, videos, or other machine-readable inputs and use that prompt to generate new content. Generative AI models are trained on vast datasets to generate realistic responses to users prompts.
GenAI tools typically rely on other AI approaches, like NLP and machine learning, to generate pieces of content that reflect the characteristics of the models training data. There are multiple types of generative AI, including large language models (LLMs), GANs, RNNs, variational autoencoders (VAEs), autoregressive models, and transformer models.
Since ChatGPTs release in November 2022, genAI has garnered significant attention from stakeholders across industries, including healthcare. The technology has demonstrated significant potential for automating certain administrative tasks: EHR vendors are using generative AI to streamline clinical workflows, health systems are pursuing the technology to optimize revenue cycle management, and payers are investigating how genAI can improve member experience. On the clinical side, researchers are also assessing how genAI could improve healthcare-associated infection (HAI) surveillance programs.
Despite the excitement around genAI, healthcare stakeholders should be aware that generative AI can exhibit bias, like other advanced analytics tools. Additionally, genAI models can hallucinate by perceiving patterns that are imperceptible to humans or nonexistent, leading the tools to generate nonsensical, inaccurate, or false outputs.
View original post here:
Artificial intelligence in healthcare: defining the most common terms - HealthITAnalytics.com
- 'Godfather' of AI is now having second thoughts - The B.C. Catholic [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- People warned AI is becoming like a God and a 'catastrophe' is ... - UNILAD [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- Navigating artificial intelligence: Red flags to watch out for - ComputerWeekly.com [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- Zoom Invests in and Partners With Anthropic to Improve Its AI ... - PYMNTS.com [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- The Potential of AI in Tax Practice Relies on Understanding its ... - Thomson Reuters Tax & Accounting [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- UK schools bewildered by AI and do not trust tech firms, headteachers say - The Guardian [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- A glimpse of AI technologies at the WIC in N China's Tianjin - CGTN [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- AI glossary: words and terms to know about the booming industry - NBC News [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- Henry Kissinger says the U.S. and China are in a classic pre-World War I situation that could lead to conflict, but A.I. makes this not a normal... [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- Programmed Values: The Role of Intention in Developing AI - Psychology Today [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- Fear the fire or harness the flame: The future of generative AI - VentureBeat [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- The Senate's hearing on AI regulation was dangerously friendly - The Verge [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- Artificial intelligence GPT-4 shows 'sparks' of common sense, human-like reasoning, finds Microsoft - Down To Earth Magazine [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- Why we need a "Manhattan Project" for A.I. safety - Salon [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- What is AGI? The Artificial Intelligence that can do it all - Fox News [Last Updated On: May 21st, 2023] [Originally Added On: May 21st, 2023]
- Generative AI Thats Based On The Murky Devious Dark Web Might Ironically Be The Best Thing Ever, Says AI Ethics And AI Law - Forbes [Last Updated On: May 23rd, 2023] [Originally Added On: May 23rd, 2023]
- Artificial intelligence: World first rules are coming soon are you ... - JD Supra [Last Updated On: May 23rd, 2023] [Originally Added On: May 23rd, 2023]
- Today's AI boom will amplify social problems if we don't act now, says AI ethicist - ZDNet [Last Updated On: May 23rd, 2023] [Originally Added On: May 23rd, 2023]
- Artificial Intelligence May Be 'Threat' to Human Health, Experts Warn - HealthITAnalytics.com [Last Updated On: May 23rd, 2023] [Originally Added On: May 23rd, 2023]
- Amid job losses and fears of AI take-over, more tech majors are joining Artificial Intelligence race - The Tribune India [Last Updated On: May 23rd, 2023] [Originally Added On: May 23rd, 2023]
- Where AI evolves from here - Axios [Last Updated On: May 23rd, 2023] [Originally Added On: May 23rd, 2023]
- Parrots, paper clips and safety vs. ethics: Why the artificial intelligence debate sounds like a foreign language - CNBC [Last Updated On: May 23rd, 2023] [Originally Added On: May 23rd, 2023]
- How Microsoft Swallowed Its Pride to Make a Massive Bet on OpenAI - The Information [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- Elon Musk on 2024 Politics, Succession Plans and Whether AI Will ... - The Wall Street Journal [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- The AI Moment of Truth for Chinese Censorship by Stephen S. Roach - Project Syndicate [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- Bard vs. ChatGPT vs. Offline Alpaca: Which Is the Best LLM? - MUO - MakeUseOf [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- How AI and other technologies are already disrupting the workplace - The Conversation [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- Meet PandaGPT: An AI Foundation Model Capable of Instruction-Following Data Across Six Modalities, Without The Need For Explicit Supervision -... [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- AI education: Gather a better understanding of artificial intelligence with books, blogs, courses and more - Fox News [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- 'Godfather of AI' says there's a 'serious danger' tech will get smarter than humans fairly soon - Fox News [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- Israel aims to be 'AI superpower', advance autonomous warfare - Reuters.com [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- Retail and Hospitality AI Revolution Forecast Model Report 2023 ... - GlobeNewswire [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- 16 Jobs That Will Disappear in the Future Due to AI - Yahoo Finance [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- What we lose when we work with a giant AI like ChatGPT - The Hindu [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- Artificial general intelligence in the wrong hands could do 'really dangerous stuff,' experts warn - Fox News [Last Updated On: May 28th, 2023] [Originally Added On: May 28th, 2023]
- 5 things you should know about investing in artificial intelligence ... - The Motley Fool Australia [Last Updated On: June 17th, 2023] [Originally Added On: June 17th, 2023]
- Mint DIS 2023 | AI won't replace you, someone using AI will ... - TechCircle [Last Updated On: June 17th, 2023] [Originally Added On: June 17th, 2023]
- Satya Nadellas Oprah Moment: Microsoft CEO says he wants everyone to have an AI assistant - Firstpost [Last Updated On: June 17th, 2023] [Originally Added On: June 17th, 2023]
- Generative AI Will Have Profound Impact Across Sectors - Rigzone News [Last Updated On: June 17th, 2023] [Originally Added On: June 17th, 2023]
- Beware the EU's AI Regulations - theTrumpet.com [Last Updated On: June 17th, 2023] [Originally Added On: June 17th, 2023]
- Olbrain Founders launch blunder.one: Redefining Human Connections in the Post-AGI World - Devdiscourse [Last Updated On: June 17th, 2023] [Originally Added On: June 17th, 2023]
- Meet Sati-AI, a Non-Human Mindfulness Meditation Teacher Lions Roar - Lion's Roar [Last Updated On: June 17th, 2023] [Originally Added On: June 17th, 2023]
- How to Win the AI War - Tablet Magazine [Last Updated On: June 17th, 2023] [Originally Added On: June 17th, 2023]
- The Synergistic Potential of Blockchain and Artificial Intelligence - The Daily Hodl [Last Updated On: June 17th, 2023] [Originally Added On: June 17th, 2023]
- Dr. ChatGPT Will Interface With You Now - IEEE Spectrum [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- Amazon tech guru: Eating less beef, more fish good for the planet, and AI helps us get there - Fox News [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- Students who use AI to cheat warned they will be exposed as detection services grow in use - Fox News [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- Crypto And AI Innovation: The London Attraction - Forbes [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- AI would pick Bitcoin over centralized crypto Tether CTO - Cointelegraph [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- What's missing from ChatGPT and other LLMs ... - Data Science Central [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- 'Alarming' misuse of AI to spy on activists, journalists 'under guise of preventing terrorism': UN expert - Fox News [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- Mastering ChatGPT: Introduction to ChatGPT | Thomas Fox ... - JD Supra [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- Transparency is crucial over how AI is trained - and regulators must take the lead - Sky News [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- Top 10 AI And Blockchain Projects Revolutionizing The World - Blockchain Magazine [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- An Orb: the new crypto project by the creator of ChatGPT - The Cryptonomist [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- AI must be emotionally intelligent before it is super-intelligent - Big Think [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- NVIDIA CEO, European Generative AI Execs Discuss Keys to Success - Nvidia [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- Tech Investors Bet on AI, Leave Crypto Behind - Yahoo Finance [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- Its Going To Hit Like A Bomb: AI Experts Discuss The Technology And Its Future Impact On Storytelling KVIFF Industry Panel - Deadline [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- AI tools trace the body's link between the brain and behavior - Axios [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- Mission: Impossibles technology unpacked From AI to facial recognition - Yahoo Eurosport UK [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- 27% of jobs at high risk from AI revolution, says OECD - Reuters [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- AI likely to spell end of traditional school classroom, leading expert says - The Guardian [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- AI humanoid robots hold UN press conference, say they could be more efficient and effective world leaders - Fox News [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- China striving to be first source of artificial general intelligence, says think tank - The Register [Last Updated On: July 11th, 2023] [Originally Added On: July 11th, 2023]
- The Government's Role In Progressing AI In The UK - New ... - Mondaq News Alerts [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- The AI Canon: A Curated List of Resources to Get Smarter About ... - Fagen wasanni [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- Future of automotive journalism in India: Would AI take charge - Team-BHP [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- OpenAI's Head of Trust and Safety Quits: What Does This Mean for ... - ReadWrite [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- From vision to victory: How CIOs embrace the AI revolution - ETCIO [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- Demis Hassabis - Information Age [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- Why AI cant answer the fundamental questions of life | Mint - Mint [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- This Health AI Startup Aims To Keep Doctors Up To Date On The ... - Forbes [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- OpenAI Requires Millions of GPUs for Advanced AI Model - Fagen wasanni [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- AI ethics experts warn safety principals could lead to 'ethicswashing' - Citywire [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- AI bots could replace us, peer warns House of Lords during debate - The Guardian [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- AI, Augmented Reality, The Metaverse | Media@LSE - London School of Economics and Political Science [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- Will architects really lose their jobs to AI? - Dezeen [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- Which US workers are exposed to AI in their jobs? - Pew Research Center [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]
- AWS announces generative A.I. tool to save doctors time on paperwork - CNBC [Last Updated On: July 27th, 2023] [Originally Added On: July 27th, 2023]