list out the challenges of ml/ ai for delivering clinical impact – pubrica

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LIST OUT THE CHALLENGES OF MACHINE LEARNING/ ARTIFICIAL INTELLIGENCE FOR DELIVERING CLINICAL IMPACT An Academic presentation by Dr. Nancy Agnes, Head, Technical Operations, Pubrica Group:www.pubrica.com Email: [email protected]

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Pubrica explores the main challenges and limitations of AI in healthcare and considers the steps required to translate these potentially transformative technologies from research to clinical practice. Continue Reading: https://bit.ly/3o4hjPT Reference: https://pubrica.com/services/research-services/biostatistics-and-statistical-programming-services/ Why Pubrica? When you order our services, Plagiarism free|on Time|outstanding customer support|Unlimited Revisions support|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

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Page 1: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

LIST OUT THE CHALLENGES OF MACHINE LEARNING/ ARTIFICIAL INTELLIGENCE FOR DELIVERING CLINICAL IMPACT

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

Page 2: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

OutlineIn-BriefIntroductionChallenges of Machine learning in Clinical Sectors Conclusion

Today's Discussion

Page 3: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

The exciting promise of artificial intelligence in healthcare has been widely reported, with potential applications across many different domains of medicine.

This promise has been welcomed as healthcare systems globally struggle to deliver the experience of healthcare, improving the health of populations,

decreasing capita costs of healthcare and improving the work-life of healthcare providers. Pubrica explores the main challenges and limitations of AI in

healthcare and considers the steps required to translate these potentially transformative technologies from research to clinical practice.

In-Brief

Page 4: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

IntroductionA rapidly increasing number of academic research studies have demonstrated the various applications of AI in healthcare, including algorithms for interpreting chest radiographs detecting cancer in mammograms, etc.

Applications have also been shown in pathologyidentifying cancerous skin lesions diagnosing retinal imaging detecting arrhythmias and even identifying certain diseases from electrocardiograms.

Contd..

Page 5: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

Analysis of the volume of data collected from electronic health records offers promise in extracting clinical information and making the diagnosis and providing real-time risk scores for transferring care predicting in-hospital mortality, prolonged length of stay, readmission risk and discharge diagnoses predicting future deterioration.

Proof concept studies aimed to improve the clinical workflow, including automatic extraction of semantic information from transcripts, recognizing speech in doctor- patient conversations, predicting the risk of failure to attend hospital appointments, and even summarising doctor-patient consultations.

Contd..

Page 6: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

The impressive array of studies, it is perhaps surprising that real-world deployments of machine learning in clinical practice are rare.

AI possess a positive impact on many aspects of medicine and can reduce unwarranted variation in clinical practice, improve efficiency and prevent avoidable medical errors that will affect almost every patient during their lifetime in a s ystematic Review Writing.

Page 7: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

Challenges of Machine learning in Clinical Sectors

Particularly critical for algorithms in EHR, it is easy to ignore that all input data are generated within a non-stationary surrounding with shifting patients, where clinical and operational practices develop using a systematicReview writing Services.

The arrival of a new predictive algorithm may produce alterations in routine, resulting in distribution compared to train the algorithm.

Methods to analyze drift and update models in response to deteriorating performance are essential.

Contd..

1. Dataset Shift

Page 9: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

Contd..

Page 10: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

A fundamental component of achieving safe and effective deployment of artificial intelligence algorithms is the development of the necessary regulatory works.

It holds a unique challenge given the current pace of innovation, significant risks involved, and the potentially fluid nature of machine learningmodels says a s ystematic review paper.

Proactive regulation will provide confidence to clinicians and medical care systems.

Contd..

2. Achieving Robust Regulation and Rigorous

Quality Control

Page 11: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

The Food and Drug Administration(FDA) guidance has to develop a modern regulatory work to make sure that safe and efficient artificial intelligence devices can efficiently provide to patients.

It is also essential to consider the regulatory measures of improvements that providers of AI products are likely to develop the entire product life with the help of writing a systematic review.

The AI systems will be designed to improve over time, representing a challenge toprimary evaluation processes.

Contd..

Page 12: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

AI learning is continuous, periodic, and system-wide updates following of clinical significance would be preferred, compared to constant updates that result in drift.

Developing the ongoing performance guidelines to calibrate models with human feedback will continually encourage the identification of the performance over time.

Contd..

Page 13: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

Even with a highly efficient algorithm that all of the above challenges, human barriers to adoption are substantial.

it will be essential to maintain a focus on clinical applicability and advance methods for algorithmic interpretability, patient outcomes, and achieve a better understanding of human-computer interactions to ensure that this technology can reach and benefit patients

Contd..

3. Human Barriers to Adopt AI in Healthcare

Page 14: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

The human understanding is limited but growing how humans are affected by algorithms in clinical practice by the FDA approval of c omputer-aided d iagnosis for mammography.

4. Developing a Better

Understanding

Contd..

of Human and Algorithms

The computer-aided diagnosis was found to increase the recall rate without improving outcomes significantly.

Excessive alerts are known to result in alert fatigueand shown that humans assisted by AI performed.

Page 15: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

Techniques to more represent medical knowledge, facilitate improved interaction and provide an explanation with clinicians meaningfully will only enhance this performance.

We must continue to gain a better understanding of the evolving relationship between physicians and human-centred AI tools in the live clinical sectors.

Page 16: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

ConclusionRecent advancements in artificial intelligence present a huge opportunity to improve the healthcare sector.

The transformation of research techniques to effective clinical destruction shows a new frontier for clinical and machine learning research.

The prospective and robust clinical evaluation will be essential to ensure that AI systems are safe.

Contd..

Page 17: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

Using clinical performance metrics that measures of technical accuracy to include the effects of AI affects the quality of health care, the variability ofhealthcare professionals, the productivity of clinical practice, the efficiency and, most importantly, patient outcomes.

Independent data that represent future target populations should be curated to enable the comparison of various algorithms says Pubrica with their systematic review writing service.

Page 18: List out the challenges of ML/ AI for delivering clinical impact – Pubrica

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