Regulatory affairs, causal inference, safe and effective health care in machine learning for...

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AN OVERVIEW OF REGULATORY AFFAIRS, CAUSAL INFERENCE, SAFE AND EFFECTIVE HEALTH CARE IN MACHINE LEARNING FOR BIO- STATISTICAL SERVICES An Academic presentation by Dr. Nancy Agens, Head, Technical Operations, Pubrica Group: www.pubrica.com Email: [email protected]

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• Over the past few years, the magnitude of machine learning in the field of healthcare delivery setting becomes plentiful and captivating. • FDA is giving suggestions to provide well equipped regulated products. Pubrica is here to help you with the regulated for Bio-statistical consulting services. Full Information: https://bit.ly/37iY7ss Reference: https://pubrica.com/services/research-services/biostatistics-and-statistical-programming-services/ Why Pubrica? When you order our services, we promise you the following – Plagiarism free, always on Time, outstanding customer support, written to Standard, Unlimited Revisions support and High-quality Subject Matter Experts. Contact us : Web: https://pubrica.com/ Blog: https://pubrica.com/academy/ Email: [email protected] WhatsApp : +91 9884350006 United Kingdom: +44- 74248 10299

Transcript of Regulatory affairs, causal inference, safe and effective health care in machine learning for...

Page 1: Regulatory affairs, causal inference, safe and effective health care in machine learning for Bio-statistical services – Pubrica

AN OVERVIEW OF REGULATORY AFFAIRS, CAUSAL INFERENCE, SAFE AND EFFECTIVE HEALTH CARE IN MACHINE LEARNING

FOR BIO- STATISTICAL SERVICES

An Academic presentation byDr. Nancy Agens, Head, Technical Operations, Pubrica Group: www.pubrica.comEmail: [email protected]

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In Brief IntroductionRegulations for Safe and Effective Health Care Machine Learning LimitationsTransfer LearningBiomarkers in FDA Conclusion

Outline

Today's Discussion

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Over the past few years, the magnitude of machine learning in the field of healthcare delivery setting becomes plentiful and

captivating.Many regulatory sectors noticing these developments and the FDA has been appealing to provide bet machine learning services with safe and

productive use. Despite having the limitations in software-driven products, FDA leads to giving a significant benefit of causal inference for the development of machine learning. FDA is giving suggestions to provide well equipped regulated products. Pubrica is here to help you

with the regulated for Bio-statistical consulting services.

In-Brief

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It creates an excellent standard on radiology and cardiology and improves the patient’s medical issues rapidly, more comfortable decision making in clinical trials.

All these maintained by drafting a set of regulations by various government sectors around the world.

Contd..

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CAUSALITY MATTERS IN MEDICAL IMAGING

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Regulations for Safe and Effective Health Care Machine Learning1. F DA (food and

Drug Administration)

Contd..

FDA is a regulatory organization there to perform the quality of any medical or clinical testing equipment, medicines, or any food-related products.

FDA is looking to provide the best facilities in health care sectors through machine-learning artificial intelligence services for the s tatistical programming services.

Though it is not an urgent need for ML-driven tools, there are few benefits of using ML-driven tools in medical fields, says FDA

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2. Applications

Contd..

Instrumental usage

Machine implementation

Invitro reagents implantation technology

Diagnostic kit

Treatment for humans and animals.

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3. F DA definition

Contd..

The usage of ML can provide both physical equipment and software tools.

This software device is known as SiMD (software in a medical device).

International medical device regulators verify these software-driven tools.

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4. C hallenges in SiMD

Cybersecurity

Management of data

Collection of data

Protecting information

To create opportunities in patient’s care

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For some reasons, the FDA does not regulate twoapplications of ML systems. They areLimitations

Clinical design support software(CDS)

Laboratory developed tests.

The actual reason for exempting these uses are CDS provide instance decision making, which may affect in the future.

On the other side Laboratory, developed tests can access only one available health care.

FDA cannot regulate these type of software.Contd..

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Last year FDA released a paper after conducting a serious discussion with the regulatory members and proposed “Regulatory Framework for Modifications toArtificial Intelligence/Machine Learning (AI/ML)-based Software as a Medical Device.”

For statistics in clinical research. It includes some premarket research products approval procedures that would delay the ML process.

Many Bio-statistical firms raised few critics against it.

The objective of the proposal is to give access to real-world data using ML products more efficiently with some regulatory barriers.

Contd..

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The objective of the proposal is to give access to real-world data using ML products more efficiently with some regulatory barriers.

It also includes some real-world affirmations.

To overcome this, the FDA officials spoke to the public to create awareness about the “approach of regulating algorithms”.

Regardless of all benefits and limitations, ML is facing challenges in the development of the safe and efficient product. Some of the challenges are

Contd..

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ML identifications

ML predictions

ML recommendations

ML algorithms for diagnostic tools

To overcome this, Subbaswamy and Saria provide some potential remedies by discussing the statistical foundations in the Bio-statistical analysis.

Data curation of individual patient’s health raises questions for request algorithms to give a more specific context.

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Some make a precise diagnosis and treatment recommendations to understand the factors in ML algorithms.

The production of digital biomarkers facing more challenges to incentivizing parties in health care sectors.

R&D validated provide significance in delivery of healthcare services.

Studies say that statistician’s tool kit has grown fast, and various technical tools have a development for causal inference of machine learning inb iomedical investigations and reviews.

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ConclusionWrapping up, in a complex environment, the role of regulatory affairs in biomedical studies for machine learning is essential.

One of the easiest ways to support the regulators is the usage of biomarkers in h ealthcare tools.

These regulations help to provide better healthcare services under the guidance of pubrica.

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