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3. Introduction
Mental health is a growing concern
worldwide, and the need for accurate
diagnosis and effective treatment is more
important than ever. In recent years, there
has been a surge of interest in using
artificial intelligence (AI) and machine
learning (ML) to predict and diagnose
mental health disorders.
In this hackathon presentation, we will
explore how AI/ML can be used to predict
and diagnose mental health disorders, and
provide a model for treating a mental
health patient using AI/ML.
4. Understanding Mental Health Disorders
Mental health disorders are complex and
can have varying symptoms. Some
common mental health disorders include
depression, anxiety, bipolar disorder,
schizophrenia, and post-traumatic stress
disorder (PTSD).
AI/ML and CNN can help in detecting
these disorders by analyzing large sets of
data and identifying patterns that may not
be visible to the human eye. This can lead
to early detection and timely intervention,
which can significantly improve treatment
outcomes.
5.
6. Use cases:
From a cluster of use cases actors,the system and the goal are the three,which
make a use case relevant.Some of the use cases and their benefit are mentioned
below.
❏ Speed Up Clinical Revenue Cycles
❏ Support patient-focused Care
❏ Help prevent provider burnout
❏ Improve Medical Diagnosing
❏ Synthesize and Simplify Big Data
7. Speed up Clinical Revenue Cycle:
❏ Machine Learning tools have the ability to prioritize work and speed up
administrative tasks,such as claims,inquiries and payment reconciliation.For
example,COPE Community Services,a private nonprofit health care provider
in southern Arizona,worked closely with Health Information Management
Systems (HiMS) to update an AI-powered electronic health record (EHR)
platform.
8. Support Patient-focused Care:
❏ Fewer resources are available for patient care when time spent on
administrative tasks is excessive.Historically sharing information in healthcare
has been time consuming and data and analytics have been widely
underused in increasing efficiency.Put simply current EHR tools take time
away from the patient.With AI-powered solution,providers can stream patient
outreach,perform daily administrative tasks,store all patient data and practice
reporting in one,easy-to-use place.
9. Help prevent provider burnout:
❏ Before the pandemic,the prevalence of provider burnout sat at an average
level of 3 on a scale of 0 to 10,with 10 representing extreme stress.Post-
pandemic,clinicians reported a stress level of 8,according to a study by the
Society of Critical Care Medicine.When prioritizing a patient-first approach
and addressing provider burnout,interoperability becomes paramount.Patients
don’t want to repeat the same information to five different staff members just
as much as providers don’t want to waste precious time on data entry.
10. Improve Medical Diagnosing:
❏ Predictive modeling algorithms can determine patient health patterns.When
you aggregate the data across multiple systems and it’s available to the
clinician in real time,they can identify risk factors and health patterns specific
to that patient’s need.This, ultimately,helps providers make better decisions
for their patients.
11. Synthesize and Simplify Big Data:
❏ There’s huge need to maximize health-care delivery amidst diminishing
provider availability and a growing patient population.Today’s providers can
leverage AI-powered tools that parse and organize patient data to better
diagnose and provide a more customized course of treatment. AI-can also
predict which patient is likely to be readmitted, alerting the staff and
providers,so they can provide proactive and preventative care.
12. Synthesize and Simplify Big Data:
❏ There’s huge need to maximize health-care delivery amidst diminishing
provider availability and a growing patient population.Today’s providers can
leverage AI-powered tools that parse and organize patient data to better
diagnose and provide a more customized course of treatment. AI-can also
predict which patient is likely to be readmitted, alerting the staff and
providers,so they can provide proactive and preventative care.
13. Predicting Mental Health Disorders with
AI/ML
Artificial Intelligence and Machine Learning
have revolutionized the field of mental health by
providing a new way to predict mental health
disorders. By analyzing large amounts of data,
AI/ML algorithms can identify patterns and
correlations that humans may not be able to
see. For example, researchers have used
AI/ML to analyze social media posts and predict
the likelihood of depression in individuals.
This technology has the potential to improve
early detection and intervention for mental
health disorders. With accurate predictions,
healthcare providers can offer preventative
measures and resources to those who are at
risk of developing a disorder. This can
ultimately lead to better outcomes for patients
and reduce the overall burden on the healthcare
system.
14. Diagnosing Mental Health Disorders with AI/ML
Mental health diagnosis is another area where AI and ML are being put to use.
AI/ML algorithms can improve the quality and timeliness of patient care by analysing data including medical
history, symptoms, and test results.
This has the potential to lessen the number of incorrect diagnoses, which in turn can improve patients'
responses to therapy.
Further, AI/ML can help doctors create individualised strategies for their patients' care.
Artificial intelligence and machine learning can analyse patient data to determine the most effective treatments
for comparable patients and then recommend those treatments to particular patients.
15. Treating Mental Health Disorders with AI/ML
New remedies for mental health illnesses are also being developed with the help of AI and ML.
Artificial intelligence and machine learning algorithms can analyse massive quantities of data to find novel
drug targets and forecast which treatments will work best for each individual patient.
Patients may benefit from receiving more tailored and efficient care as a result of this.Virtual counselling and
therapy sessions are another way that AI and ML can help improve access to mental health services.
For people who can't afford or don't have access to in-person counselling sessions, this is a great alternative.
16. PREDICTING MENTAL DISORDERS FROM COLLECTED DATA
• Data-driven machine learning algorithms predict
mental disorders.
• Logistic regression, decision trees, random
forests, support vector machines, and neural
networks are popular algorithms.
• Data and research question determine algorithm
selection.
18. Following some additional research, we came to the realisation that these
detections may be boiled down to two distinct algorithms:-
An algorithm that is based on the user's behaviour in addition to an algorithm that
is based on their signature
19. Behavior-Based Algorithm
The behavior-based algorithm for mental illness
detection relies on analyzing patterns in an
individual's behavior, such as changes in sleep
patterns, social interactions, and physical activity
levels.
By collecting data from wearable devices and other
sources, the algorithm can identify potential
indicators of mental health issues and provide early
intervention and treatment options.
Language Analysis
In addition to behavior analysis, machine learning
algorithms can also analyze language patterns to
detect potential signs of mental illness.
By analyzing text and speech data, the algorithm
can identify changes in vocabulary, syntax, and tone
that may indicate depression, anxiety, or other
mental health issues.
20. Signature-Based Mental Health Detection:-
Signature-based mental health detection assumes
that people with mental health issues have
specific behavioural and language patterns.
Machine learning algorithms that analyse vast
datasets can find these patterns. Depressed
people may employ gloomy or hopeless words.
They may also change their sleep or exercise
routines. Researchers can use these patterns to
create mental health prediction algorithms.
Signature-based mental health detection can
detect mental health issues early, personalise
treatment programmes, and evaluate
interventions.Signature-based mental health
identification can help doctors identify at-risk
patients and intervene early. This can avoid
serious mental health issues and enhance patient
outcomes.
21. Signature-based mental health detection is a promising approach for detecting
and treating mental health concerns. By analyzing patterns in behavior and
language, researchers can develop algorithms that predict the likelihood of
mental health issues.
While there are ethical considerations and limitations to this approach, continued
research and development have the potential to revolutionize the way we
approach mental health. With improved detection and treatment methods, we
can improve outcomes for individuals with mental health concerns and promote
overall well-being.
22. Conclusion:
Machine learning algorithms could improve mental disorder detection and therapy.
These algorithms analyze language and behavior patterns to detect mental health
issues and enable early treatment. Address privacy, ethics, and data control.
Properly applied machine learning algorithms can improve mental health
diagnosis and treatment.
Our mental health app empowers you to take control of your mental health and
make progress towards feeling better every day.