Does AI in Healthcare Hold Great Promise, Yet Requires Regulation?

Binmile
Binmile
Published in
5 min readFeb 15, 2024
Does AI in Healthcare Hold Great Promise, Yet Requires Regulation?
AI in Healthcare Shows Great Promise, But Needs Regulation

Discussion about implementing AI in Healthcare has been doing the rounds for quite some time. Experts believe that this particular technology has huge potential to transform the healthcare sector by leveraging plenty of medical data and rapid advancements that have taken place in analytic techniques, like machine learning, logic-centric methods, and statistical approaches. The impact of Artificial Intelligence in enhancing medical results is massive, which is feasible through improved support for clinical trials, enhancement in medical diagnosis and treatment, and increased knowledge and skills of healthcare professionals.

That’s not all! AI as a Service plays a significant role in dealing with the problems in areas with a shortage of healthcare personnel by helping in perceiving retinal scans and radiology images, among the rest of the applications. But:

What Are The Challenges of Using AI in Healthcare?

Challenges of Using AI in Healthcare

The deployment of AI in Healthcare, including large language models, is taking place without a holistic understanding of their potential impacts, presenting a few solid benefits and risks to end-users, including doctors and patients.

When AI systems get access to health data, they can access the confidential information of patients, which can compromise their privacy. Owing to this, it is necessary to develop and establish strong legal and regulatory frameworks to protect the privacy, security, and integrity of people.

WHO’s Director-General recently said that tapping AI in Healthcare guarantees good health outcomes in the future, but it also poses certain challenges, such as:

  • Unethical data collection
  • Cybersecurity threats
  • Augmenting biases or misinformation

Therefore, to address the need to handle the rapid rise of AI health technologies, the World Health Organization emphasizes the significance of transparency and documentation, risk management, and validating data externally. “This new guidance will support nations to regulate AI effectively to take its advantage, be it to treat cancer or detect tuberculosis, while reducing the risks” WHO’s Director-General further added. Also, the renowned healthcare software development services provider will pay heed to the development of ethical AI models for the healthcare industry.

Read More: Perks of Healthcare BI Software in the Healthcare Industry

What Are Some Regulations to be Focused on When Using AI in Healthcare?

As per a global data and business intelligence platform, AI in Healthcare market was valued at 11 billion USD globally in 2021 and it is predicted that this market will become worth 188 billion USD by 2030. However, the challenges emerged from regulations, such as the Health Insurance Portability and Accountability Act (HIPAA) in the US and the General Data Protection Regulation (GDPR) in Europe are sorted out with an emphasis on comprehending the scope of jurisdiction and consent requirements, in the context of privacy and data protection.

AI systems are complicated and depend not only on the code they are created with but also on the data they are trained on, said the World Health Organization. Having better regulations in place can help handle the risks of AI in Healthcare, as this technology is generally defamed for increasing biases in training data.

It can be challenging for AI models to precisely represent the diversity of the population, resulting in biases, incorrectness, or even failure.

To aid in reducing these risks, regulations can be exploited to ensure that the traits, such as gender, ethnicity, and race are reported and datasets are intentionally made representative. A commitment to quality data is important in AI in Healthcare to make sure systems do not upsurge biases and errors, the report stressed.

Read Further: QA Testing for Healthcare Software or App

How to Ensure Responsible Management of AI in Healthcare?

In response to the upsurging worldwide demand for accountable management of the rapid growth of AI health technologies, the WHO’s publication summarizes six key areas to regulate AI in Healthcare field:

  1. To establish trust, the document emphasizes the importance of transparency and documentation, supporting all-inclusive documentation throughout the whole product lifecycle and diligent tracking of development processes.
  2. While addressing risk management, considerations, like intended use, human intervention, continuous learning, model training, and cybersecurity threats must be thoroughly handled, prioritizing simplifying models as far as possible.
  3. A commitment to data quality, including stringent pre-release evaluation of systems, is considered to be important to prevent the augmentation of biases and errors by systems powered by AI in Healthcare.
  4. External validation of data and clarity about the targeted use of Gen Artificial Intelligence are highlighted as necessary measures to make sure of safety and facilitate effective regulation.
  5. Fostering collaboration between regulatory bodies, patients, healthcare personnel, government partners, and industry representatives is recognized as a key strategy to ensure that products and services remain compliant with regulations throughout their lifecycles.
  6. The publication admits the difficulties presented by regulations, like GDPR in Europe and HIPAA in the US, underscoring the importance of apprehending jurisdictional scope and consent requirements to support privacy and data protection in AI in Healthcare.

Dive Deeper: All About Telemedicine App

How to Improve Health Outcomes Using AI in Patient Care?

How to Improve Health Outcomes Using AI in Patient Care

If you remember well, the WHO indicated strengthening clinical trials, enhancing medical diagnosis, and increasing medical professionals’ knowledge and skills in order to improve health results using AI in Healthcare. In fact, in places with the unavailability of medical experts, AI can assist in executing various medical processes for disease detection and treatment.

WHO recommended a few measures to handle AI models in healthcare responsibly. It insisted on transparency to promote trust by documenting the whole product lifecycle and tracking development processes. To ensure proper risk management, troubles like intended use, human interventions, continuous learning, training models, and cybersecurity threats must be perfectly resolved using simple models.

Also Read: AI in Patient Care

The Rundown

No doubt, Artificial Intelligence is a revolutionary technology, but it is not fully ready yet to be used in the medical industry. Yes, there are certain challenges that need to be tackled well in order to deploy AI in Healthcare field. Building ethical AI models should be given special attention to safeguard the sensitive information of people and use only credible datasets to train those operational models. Rest assured, that time is pretty near when AI will become the biggest and most reliable assistant of doctors and other medical practitioners out there when it comes to performing medical tasks.

We hope you liked the content focused on the use of AI in Healthcare. Now, if you like to develop an AI system or solution for the medical field keeping territory-based regulations in consideration, it is in your best interest to set up a formal meeting with the IT specialists of a top AI development company.

Originally published at https://binmile.com on February 15, 2024.

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Binmile
Binmile
Editor for

Leading Software Development Services Company.