The Future for Artificial Intelligence (AI) in Healthcare - PowerPoint PPT Presentation

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The Future for Artificial Intelligence (AI) in Healthcare

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The healthcare industry, evolving with the world, is revolutionized by artificial intelligence (AI). Recent trends affirm AI's dominance, driven by extensive datasets, cost reduction, enhanced computing power, affordable hardware, and collaborative efforts across healthcare domains. – PowerPoint PPT presentation

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Date added: 1 May 2024
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Title: The Future for Artificial Intelligence (AI) in Healthcare


1
The Future for Artificial Intelligence (AI) in
Healthcare
  • Introduction
  • World is changing, so is the healthcare industry
    with the emergence of artificial intelligence
    (AI). AI in healthcare has revolutionized medical
    practices, from fundamental research to practical
    applications in surgery techniques and disease
    detection, and in addition to that it has brought
    huge changes in medical practices.
  • We asked the internet about the recent healthcare
    trends in 2024. After hours of research, over 5
    white papers, 43 peer-reviewed articles and
    thousands of reputed healthcare blogs kept
    telling what the number one trend is
  • Undeniably AI in Healthcare.
  • Today, AI in healthcare is exponentially growing
    because of
  • Generation of large and complex healthcare
    datasets
  • The pressing need to reduce healthcare costs
  • The need to improve computing power
  • Decline in hardware costs
  • Encourage productive collaborations among
    different healthcare domains

Applied Artificial Intelligence in Healthcare
Advancements
2
  • AI in healthcare leads to core areas of research
    and applied medicine, including surgery methods,
    and disease detection. Studies across variable
    sub-fields help establish hypotheses and conduct
    experiments with the most advanced tools of RD,
    backed by heavy global investments. This is
    helping artificial intelligence flourish with a
    collective effort towards making healthcare
    better by the day.
  • Through these efforts, AI has traveled from
    extensive laboratories to small clinics and
    hospitals you visit, where AI is used EVERY
    SECOND of the day by administrators and
    independent physicians.
  • Administrative Workflow Out of the biggest
    scopes of AI in healthcare, most articles expand
    on how AI has improved efficiency in
    administrative workflow through the automation of
    non-clinical tasks.
  • Error Detection AI algorithms easily identify
    errors in how a patient self-administers
    medications, or frequent medical coding mistakes
    in transcription
  • Fraud Detection AI can assist in identifying odd
    or dubious patterns of insurance claims,
    especially the invoicing of expensive treatments
    or unfulfilled procedures.
  • Drug Discovery and Development By evaluating
    large datasets to find promising drug prototypes
  • and estimate their efficacy, artificial
    intelligence (AI) speeds up the drug discovery
    process.

Financially how is it looking? Two years ago, a
Morgan Stanley research report predicted that the
costs dedicated to artificial intelligence and
machine learning in the healthcare sector are
expected to surpass 10.5 in 2024, up from 5.5
in 2022. Sodid it? Well, today, the global Al
in Healthcare market size is valued at USD 20.9
billion in 2024 and is estimated to reach USD
148.4 billion by 2029. In other words, estimate a
whopping 48.1 CAGR!
Data Handling, Visualization, and Management
3
  • Our case for AI in healthcare today will focus on
    the single biggest factor that concerns
    healthcare Data.
  • Unstructured Data Big data analytics in
    healthcare shows that up to 80 per cent of
    healthcare documentation is unstructured data,
    and therefore goes largely unutilized by health
    systems since the data science of mining and
    extraction of this information is challenging and
    resource intensive.
  • Cognitive Overload The management of EHR systems
    carrying thousands of patient profile records
    causes immense cognitive overload on the hospital
    administration, leading to serious mental
    fatigue, reduced efficiency, and increased
    stress. Furthermore, this can severely impact a
    physician or a nurses ability to practice
    anymore.
  • AI in healthcare leverages the powerful
    healthcare technology of NLP and Machine learning
    to handle data overload. How?
  • Giving voice to unstructured data
  • Without natural language processing in
    healthcare, unstructured data is not in a usable
    format for modern computer-based algorithms to
    extract and use beneficially.
  • From searching to analyzing to interpreting
    enormous patient datasets, NLP is winning the
    healthcare administration field with its tools of
    advanced medical algorithms and machine learning
    in healthcare. NLP seamlessly extracts what was
    buried beneath text-data forms with relevancy,
    insights, and further recommendations.
    Furthermore, it
  • Automates the transcription of physician-patient
    interactions, reducing the time and effort
    required for manual data entry
  • accelerates the medical coding process and
    minimizes the risk of coding errors with AI
    transcription tools.
  • ensure accurate reimbursement for physicians and
    legal security compliance by error detection
    methods
  • Facilitates Information retrieval and data
    analysis for further research in Medicine
  • Giving relief to our physicians
  • Physicians spend a lot of time inputting the how
    and the why of whats happening to their patients
    into chart notes. As we learnt, the unstructured
    character of raw data does not make information
    easily extractable for further analysis. Hence
    physicians face problems like

4
  • Some of the primary points of need where NLP
    comes to help out physicians in handling big data
    are
  • Specialized Information Extraction Healthcare
    natural language processing uses specialized
    engines capable of scrubbing large sets of
    unstructured data to discover previously missed
    or improperly coded patient conditions.
  • Efficient Documentation and SOAP Notes NLP
    algorithms make clinical documentation
    requirements easier by recording patient-provider
    conversations in real-time, additional dictation
    by the provider post-visit, or generating
    tailored medical information for patients ready
    for discharge. We will discuss AI Medical scribe
    for doctors' specific use cases in the next
    section.
  • Automated Medical Coding Physicians face severe
    problems with errors made by human medical coders
    in translating extensive and detailed medical
    jargon into ICD-10 medical codes. With automated
    medical coding, AI-powered s can handle detailed
    documentation including the requirement for
    laterality, body part, and methodology
    description, and translate conversations into
    accurate medical codes.
  • AI in Healthcare as a Scribe for Doctor
  • One cannot hold a conversation on AI in
    healthcare expertise in handling big data without
    bringing in the best software to represent it
    AI Medical Scribe.
  • This healthcare technology is seeing itself at
    the zenith of AI in healthcare. WHY?
  • Simply because providers were in search of
    innovative solutions that streamline their
    clinical documentation processes and improve
    patient care in the fast-paced and data- driven
    world. The AI in healthcare solved it.
  • Targeting the primary pain points like
    documentation in medical recording and clinical
    decision-making, AI scribe for doctors have aided
    in a physicians problems with data.
  • How so?
  • A survey by Elation Health found that 33 of
    primary care physicians are already trialing AI
    scribe technologies, indicating significant early
    adoption.
  • Physicians spend a significant portion of their
    day on charting and paperwork, with some
    estimates indicating up to 4.5 hours daily. AI in
    healthcare for doctors high-end NLP and ASR
    solutions easily automates these tasks, allowing
    clinicians to complete charting more efficiently
    and see more patients.

5
  • Taking care of BOTH physician revenue margins and
    enhancing patient care, AI in healthcare
    diminishes the reverberating effect of physician
    burnout by automating documentation in the
    following ways
  • Automated Recording of Patient-Provider
    conversations
  • Accurate extraction of relevant information
  • Structured SOAP notes and documentation
  • Easy-to-operate Interface for review and sign
  • Effortless integration with the EHR system
  • Diminishing Physician Burnout
  • AIs integration into a doctors documentation
    tasks has changed the landscape of physician
    burnout.
  • Googles study on their AI scribe technology,
    Automated Speech Recognition for Medical
    Conversations, showed a 20 reduction in
    documentation errors compared to manual
    transcription.
  • Physicians using Nuances DAX solution saw a 20
    increase in patient throughput, allowing them to
    see more patients and offset staffing shortages

6
  • Exceptional Medical scribes using customized AI
    algorithms like RevMaxx and Deepscribe have
    reported a reduction of after-hours EHR
    documentation by as much as 75 per cent, leading
    to better job satisfaction and reduced physician
    burnout.
  • Increasing Revenue Cycle
  • Todays AI Medical scribes have set a new record
    for how long it takes for a clinical note to
    fully be written and coded- only a few hours or
    minutes.
  • The speedy process in turn elevated the revenue
    cycle for the physicians, leading to
  • Better cash flow
  • Fewer accounts receivable days
  • Less pressure on your practice
  • Improving Patient Care
  • AI scribes enable more face-to-face time with
    patients, fostering better patient-provider
    relationships.
  • A study published in NCBI (National Library of
    Medicine) found that physicians using AI scribes
    spent 75 more time interacting directly with
    patients, leading to improved patient
    satisfaction and reduced physician burnout.
  • Improved Care Coordination Accounting for
    patient happiness in patient care, Artificial
    Intelligence in healthcare promotes better care
    coordination for patients with complex health
    issues. scribe technology can do this by making
    sure that when patients get comprehensive,
    up-to-date clinical notes shared with them, as
    well as accessed by different providers whenever
    needed.
  • This helps in preventing significant gaps in
    patient care which were previously left by
    administrative burdens and physician burnout.

7
  • Error Recognition and Correction While
    healthcare technology AI provides cutting-edge
    accuracy in documentation, Human scribes can
    recognize and correct errors in real-time. They
    can use their judgment and intuition to identify
    mistakes that AI might miss, thus improving the
    accuracy of medical records and patient outcomes
  • Adaptability and Contextual Understanding The
    models of AI medical scribes are trained in
    multiple languages and verbal cues to effectively
    document unstructured conversations between
    doctors and patients. However, for non-verbal
    cues, human scribes can take over, leveraging
    their real-time presence to ask follow-up
    questions to clarify information, ensuring the
    medical record is accurate and complete.
  • Security and Compliance
  • Beyond the technicalities, one must understand
    the importance of security and legal compliance
    when handling patient data. To guarantee
    compliance with regulatory requirements,
    Protected Health Information (PHI) must be held
    to strict privacy and security standards. Major
    consequences may result from any abuse, data
    breaches, or illegal access to sensitive health
    data.
  • Thats why RevMaxx AI makes it crystal clear in
    its security policy of compliance with every
    organizations data security needs. This
    includes
  • Complete HIPAA compliance along with
    certifications for data protection and
    information security
  • Abiding by secure data storage practices
  • Transparent data processing strategies
  • Secure data transfer outflows and inflows
  • RevMaxx and other proprietary AI medical scribe
    software understand the importance of security
    awareness and consent regarding the use of data
    for AI models. Moreover, patients and physicians
    alike must trust that their data is being used
    for their benefit. These medical scribes
    safeguard patient data to uphold ethical
    principles and secure trust.

Final Thoughts What the healthcare world needs is
the implementation of AI augmented human
decision- making. We believe in administration
and healthcare executives using AI to prioritize
patient-
8
centric care, not provide it. So, with the help
of sophisticated AI software like AI medical
scribes, AI medical coding software,
telemedicine, and more, the healthcare industry
can and should expand to broader trends in
innovation, focusing on data utilization for
equitable patient care, value-based approaches,
and the integration of various healthcare
technologies.
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