kanan mam ppt.pptxxxxxcxccccccçcccccccccc

KRITIKASHARMA239498 47 views 14 slides Jul 04, 2024
Slide 1
Slide 1 of 14
Slide 1
1
Slide 2
2
Slide 3
3
Slide 4
4
Slide 5
5
Slide 6
6
Slide 7
7
Slide 8
8
Slide 9
9
Slide 10
10
Slide 11
11
Slide 12
12
Slide 13
13
Slide 14
14

About This Presentation

Ai


Slide Content

HEALTH CARE USING AI NAME - ALIBHA SAHOO BRANCH - CST (A) REDG NO - ROLL NO - UNDER THE GUIDANCE OF

CONTENTS INTRODUCTION HISTORY OF AI HEALTH CARE WORKING PRINCIPLE OF HEALTH CARE USING AI APPLICATIONS OF AI HEALTH CARE ADVANTAGES OF HEALTH CARE USING AI DISADVANTAGES OF HEALTH CARE USING AI CONCLUSION REFERENCES

Artificial Intelligence (AI) is revolutionizing the healthcare industry by providing innovative solutions to improve patient care, diagnostic accuracy, treatment effectiveness, and healthcare management. AI technologies encompass a range of techniques such as machine learning, deep learning, natural language processing, robotics, and predictive analytics. By harnessing the power of AI, healthcare systems can leverage vast amounts of data and sophisticated algorithms to drive advancements in medical research, clinical decision-making, and patient outcomes. INTRODUCTION

HISTORY OF AI HEALTH CARE In the 1960s and 1970s, early AI systems were developed for medical diagnosis and decision-making. These systems used rule-based expert systems to mimic the knowledge and decision-making abilities of human experts. In the 1980s and 1990s, machine learning techniques started to be applied in healthcare. These algorithms could analyze large amounts of data and identify patterns, aiding in tasks such as disease diagnosis, prognosis, and treatment planning.

Data collection Data preprocessing and integration Machine learning and deep learning Training and model development Decision-making and prediction Human-AI collaboration Real-time monitoring and feedback Continuous learning and improvement WORKING PRINCIPLE OF HEALTH CARE USING AI

APPLICATION OF AI HEALTH CARE Medical imaging analysis Electronic health record (EHR) analysis Drug discovery and development Precision medicine AI algorithms can analyze medical images, such as X-rays, CT scans, MRIs, and pathology slides, to assist radiologists and pathologists in detecting abnormalities, diagnosing diseases, and identifying treatment options. AI algorithms can analyze vast databases of chemical compounds, predict their properties, and identify potential drug candidates. AI can also help in clinical trial design, patient recruitment, and monitoring drug safety. AI can analyze EHRs and extract valuable insights from large amounts of patient data. It can identify patterns, predict disease outcomes, and facilitate population health management. AI can analyze genetic data, biomarkers, and patient characteristics to identify personalized treatment options and predict disease risks. This enables precision medicine approaches tailored to individual patients.

ADVANTAGES OF HEALTH CARE USING AI

Enhanced diagnostic accuracy Personalized treatment plans Predictive analytics and early detection Efficient healthcare management Remote patient monitoring and telemedicine Drug discovery and development

DISADVANTAGES OF HEALTH CARE USING AI

Lack of human touch and empathy Potential for errors and biases Privacy and data security concerns Limited interpretability and transparency Integration challenges and resistance to adoption Ethical dilemmas and accountability

CONCLUSION The application of AI in healthcare offers numerous advantages, including enhanced diagnostic accuracy, personalized treatment plans, predictive analytics, efficient healthcare management, remote patient monitoring, drug discovery, and surgical precision. AI has the ability to analyze vast amounts of data, identify patterns, and provide valuable insights to healthcare professionals.

REFERENCES https://designshack.net/articles/inspiration/medical-powerpoint-templates/ https://builtin.com/artificial-intelligence/artificial-intelligence-healthcare https://en.wikipedia.org/wiki/Artificial_intelligence_in_healthcare

THANK YOU
Tags