Neither machine learning nor AI technology is "better" than the other when it comes to healthcare communications. Machine learning does however offer the ability to adjust to the constant changes in the requirements for effective healthcare communications in areas such as HIPAA compliant email and text messaging.
According to a recent study that explained what machine learning is, “ML usually provides systems with the ability to learn and enhance from experience automatically without being specifically programmed…”
Machine learning is a branch of artificial intelligence that allows systems to learn from data, identify patterns, and make decisions with minimal human intervention. The purpose of machine learning is to develop algorithms that can process large volumes of data and perform tasks by generalizing from the input data instead of following explicitly programmed instructions.
The same study provided, “The learning algorithms can be categorized into four major types, such as supervised, unsupervised, semi-supervised, and reinforcement learning in the area…”
It works by building mathematical models based on sample data, known as "training data," to make predictions or decisions without being explicitly programmed to perform the task. These models are trained through various algorithms that optimize their ability to predict new, unseen data.
The applications in healthcare communications:
See also: What is machine learning?
A Journal of Family Medicine and Primary Care study, “Artificial intelligence (AI) is the term used to describe the use of computers and technology to simulate intelligent behavior and critical thinking comparable to a human being.”
Artificial Intelligence (AI) is a branch of computer science that creates machines intended to mimic human intelligence—tasks like learning from experiences, understanding complex content, making decisions, and recognizing speech or objects. AI's purpose is to automate tasks that typically require human cognitive abilities.
AI operates by integrating vast datasets with sophisticated algorithms that process and learn from this data. For instance, an AI system can learn to recognize patterns or behaviors by analyzing thousands of examples. These algorithms adjust their own programming instead of the processes used by machine learning.
These uses of AI in healthcare communication include:
See also: Artificial Intelligence in healthcare
AI consists of a wider range of technologies that can execute tasks such as natural language processing, automated decision-making, and immediate responsiveness to user interactions. This makes AI incredibly useful for tasks like real-time language translation and ensuring that communication interfaces are intuitive and user-friendly.
On the other hand, Machine Learning, a subset of AI, specializes in analyzing data and learning from it. ML algorithms can continually learn from communication patterns to detect anomalies that may indicate breaches or non-compliance with HIPAA regulations, such as unauthorized sharing of protected health information (PHI).
For ensuring HIPAA compliance in communication tools, ML may be considered more directly beneficial because it can adapt and improve its detection algorithms over time.
While ML is a subset of AI and typically depends on the broader AI framework to function, its specific focus is on learning from data, which can be applied independently.
AI and ML can help detect unusual patterns that might indicate a security breach, analyze data access logs for unauthorized access.
While AI and ML can automate many tasks and improve efficiency, they are not likely to completely replace human roles in healthcare communications.