SlideShare a Scribd company logo
1 of 11
Download to read offline
5 Reasons Why Radiology Needs
Artificial Intelligence
Created on October 25th, 2016
Simon Harris, Managing Director & Principal Analyst
simon.harris@signifyresearch.net
HealthTech Market Insights
Powered by Data
© 2016 Signify Research 2
Global shortage of radiologists1
5 Reasons why radiology needs artificial intelligence
Enhanced productivity2
Better diagnostic accuracy3
Lower rates of misdiagnosis4
Improved patient outcomes5
Background
The information in this presentation is
taken from a market analysis report
from Signify Research titled “Diagnostic
Analytics – World Market – 2016
Edition”. See slide 10 for details.
Reason 1 - Shortage of radiologists in many countries
HealthTech Market Insights
Powered by Data
© 2016 Signify Research 3
US
105
DE
98
UK
49
ES
112
NG
2
BR
21
ZA
17
SA
35
AU
86
JP
46
In most countries there is an insufficient
number of radiologists to meet the ever-
increasing demand for imaging and
diagnostic services
The situation will get worse, as imaging
volumes are increasing at a faster rate
than new radiologists are entering the
field.
Cognitive computing techniques, such as
neural networks, deep learning and
predictive analytics, may help by
improving the productivity of radiologists
≥100 radiologists per million population
50 - 99 radiologists per million population
<50 radiologists per million population
Sources: National radiology societies and government agencies. See slide 9 for details
HealthTech Market Insights
Powered by Data
© 2016 Signify Research
Reason 2 - Enhanced radiologist productivity
1 Smart alerts to regions of interest
2 Automatic image annotation and quantification
3 Faster access to patient information held in EHRs and other systems
Compare readings with images, diagnoses and outcomes of similar cases4
Create draft reports for radiologists5
4
Reason 3 - Better diagnostic accuracy
HealthTech Market Insights
Powered by Data
© 2016 Signify Research 5
Reduces human error
Accurately tracks the growth of lesions and tumours over time
More quantitative and more objective diagnosis
An automated second opinion
Expedites early interventions
HealthTech Market Insights
Powered by Data
© 2016 Signify Research 6
Reason 4 - Lower rates of misdiagnosis
the average error rate of radiologists for unselected cases1
the average retrospective error rate of radiologists1
of radiologists in the US will face a lawsuit2
of the women who get annual mammograms over a 10-
year period will have a false-positive finding3
4%
7%
50%
The average radiologist reads approximately 15,000
cases per year.4 Assuming a 4% error rate, on
average radiologists will misinterpret about 600
cases per year.
Machine learning algorithms can alert radiologists
to disease indicators.
Cognitive computing can mine patient records and
medical literature to provide radiologists with
relevant information, and to compare new cases
with existing ones.
Radiologists suffer from fatigue, computers do not.
30%
HealthTech Market Insights
Powered by Data
© 2016 Signify Research
Reason 5 - Improved patient outcomes
Problem Benefits of Cognitive Solutions
Late detection and diagnosis of disease makes treatment
less likely to succeed and reduces the chances of recovery
Reduced reading times. Longer term, algorithms will be
embedded in imaging scanners for immediate detection of
disease at the time of the scan.
Urgent cases are not always prioritised
Review scans in real-time and automatically escalate priority
cases within the radiologist’s reading queue.
Incidental findings are often not followed-up
Automatically read radiology reports to look for incidental
findings, extract relevant information, schedule follow-up
exams and prompt the referring physician to action the follow-
ups recommended by the radiologist.
7
HealthTech Market Insights
Powered by Data
Barriers to mainstream adoption of cognitive computing in radiology
More clinical evidence is needed regarding the performance of machine learning algorithms in radiology applications
Resistance from some radiologists who see cognitive computing as a threat
High level of scepticism regarding existing (not machine learning based) computer aided detection solutions, e.g. CADe for
mammography, due to “alert fatigue”
The “black box” nature of machine learning algorithms can undermine radiologists’ confidence in the results
The regulatory bodies, e.g. FDA and CE, have taken a cautious approach to approving solutions that use machine learning techniques
Most of the current solutions are for specific use-cases, e.g. detection of lung nodules in chest CT scans, but radiologists typically
require a comprehensive “tool kit” with a suite of algorithms capable of detecting a wide range of conditions across multiple modalities
Machine learning algorithms for detection will gain acceptance in the coming years; however, it will likely be at least 5 years, and
possibly many more, before computer-aided diagnosis becomes mainstream
Machine learning algorithms for detection will gain acceptance in the coming years; however, it will likely be at least 5 years, and
possibly many more, before computer-aided diagnosis becomes mainstream
More clinical evidence is needed regarding the performance of machine learning algorithms in radiology applications
Resistance from some radiologists who see cognitive computing as a threat
High level of scepticism regarding existing (not machine learning based) computer aided detection solutions, e.g. CADe for
mammography, due to “alert fatigue”
The “black box” nature of machine learning algorithms can undermine radiologists’ confidence in the results
The regulatory bodies, e.g. FDA and CE, have taken a cautious approach to approving solutions that use machine learning techniques
Most of the current solutions are for specific use-cases, e.g. detection of lung nodules in chest CT scans, but radiologists typically
require a comprehensive “tool kit” with a suite of algorithms capable of detecting a wide range of conditions across multiple modalities
Potential for legal complications. What happens if the cognitive solutions gets it wrong?
8© 2016 Signify Research
References
HealthTech Market Insights
Powered by Data
© 2016 Signify Research 9
Estimates for the number of practicing radiologists by country were obtained from a variety of national radiology societies and government sources, including Royal College of
Radiologists (UK), Société Française de Radiologie (France), Deutsche Röntgengesellschaft (Germany), Sociedad Espanola de Radiologia Medica (Spain), Radiological Society of
South Africa, Association of Radiologists in Nigeria, Radiological Society of Saudi Arabia, The Royal Australian and New Zealand College of Radiologists, Japan Radiological Society,
American College of Radiology, Colégio Brasileiro de Radiologia e Diagnóstico por Imagem (Brazil).
Other references:
1. Radiology Quality Institute, Diagnostic Accuracy in Radiology: Defining a Literature-based Benchmark
2. Jena AB, Seabury S, Lakdawalla D, Chandra A. Malpractice risk according to physician specialty. N Engl J Med 2011;365(7):629–636. CrossRef, Medline
3. American Cancer Society
4. Bhargavan M, Kaye AH, Forman HP, Sunshine JH. Workload of radiologists in United States in 2006-2007 and trends since 1991-1992. Radiology. 2009;252:458-467.
HealthTech Market Insights
Powered by Data
About Signify Research
At Signify Research we are passionately curious about Healthcare Technology and we strive to deliver the most robust
market data and insights, to help our customers make the right strategic decisions. We blend primary data collected
from in-depth interviews with technology vendors and healthcare professionals, to provide a balanced and complete
view of the market trends.
Whether our research is delivered as an off-the-shelf report or as a consultancy project, our customers benefit from
direct access to our Analyst team for an expert opinion when they need it. We encourage our clients to think of us as
an extension to their in-house market intelligence team.
Our major coverage areas are Healthcare IT, Medical Imaging and Digital Health. In each of our coverage areas, we
offer a full suite of products including Market Reports, Customer Insights and Vendor Selection Tools, as well as custom
research and consultancy services. Our clients include technology vendors, healthcare providers and payers,
management consultants and investors.
Find us on the web at www.signifyresearch.net.
Simon Harris
Managing Director & Principal Analyst
Simon has 23 years of experience in technology
market intelligence, having served as Executive
Vice President at IMS Research, a leading source
of research and analysis for the global technology
industry. Whilst at IMS Research, Simon
established the InMedica brand of medical
market research. IMS Research was acquired by
IHS Inc. in 2012 and Simon stayed on for four
years as Senior Research Director for the
company’s Technology market intelligence
division. Simon left IHS in March 2016 to launch
Signify Research.
simon.harris@signifyresearch.net
+44 1234 436 150
Diagnostic Analytics - World Market Report – 2016 Edition
Signify Research recently published a detailed analysis of the use of artificial intelligence in clinical applications (Diagnostic Analytics).
The report provides strategic insights and data on the current status and forecast development of the market and will answer the
following questions:
• Who is developing AI-based diagnostic tools? What is the status of their product development? Do they have regulatory approval?
• What applications are vendors targeting? For each application, what is the value proposition?
• What is the size of the market today and how fast will the market grow?
• What are the major challenges with bringing AI-based tools to market and what strategies are vendors using to overcome them?
• What are the views and perceptions of radiologists regarding AI-based diagnostic tools? Do they see them as an asset or a threat?
Click here or contact Simon Harris for further information about the report.
5 Reasons Why Radiology Needs Artificial Intelligence

More Related Content

What's hot

Distortion Artifacts in MRI and their correction
Distortion Artifacts in MRI and their correctionDistortion Artifacts in MRI and their correction
Distortion Artifacts in MRI and their correction
Miami Cancer Institute
 

What's hot (20)

General Consideration of all imaging Modalities
General Consideration of all imaging ModalitiesGeneral Consideration of all imaging Modalities
General Consideration of all imaging Modalities
 
ARTIFICIAL INTELLIGENCE(AI) IN RADIOLOGY.pptx
ARTIFICIAL INTELLIGENCE(AI) IN RADIOLOGY.pptxARTIFICIAL INTELLIGENCE(AI) IN RADIOLOGY.pptx
ARTIFICIAL INTELLIGENCE(AI) IN RADIOLOGY.pptx
 
Patients are about to see a new doctor: artificial intelligence by Entefy
Patients are about to see a new doctor: artificial intelligence by EntefyPatients are about to see a new doctor: artificial intelligence by Entefy
Patients are about to see a new doctor: artificial intelligence by Entefy
 
Teleradiology
TeleradiologyTeleradiology
Teleradiology
 
Artificial intelligence in health care by Islam salama " Saimo#BoOm "
Artificial intelligence in health care by Islam salama " Saimo#BoOm "Artificial intelligence in health care by Islam salama " Saimo#BoOm "
Artificial intelligence in health care by Islam salama " Saimo#BoOm "
 
A survey of deep learning approaches to medical applications
A survey of deep learning approaches to medical applicationsA survey of deep learning approaches to medical applications
A survey of deep learning approaches to medical applications
 
Artificial Intelligence in Radiation Oncology
Artificial Intelligence in Radiation OncologyArtificial Intelligence in Radiation Oncology
Artificial Intelligence in Radiation Oncology
 
Artificial Intelligence in Medicine
Artificial Intelligence in MedicineArtificial Intelligence in Medicine
Artificial Intelligence in Medicine
 
Intro to Deep Learning for Medical Image Analysis, with Dan Lee from Dentuit AI
Intro to Deep Learning for Medical Image Analysis, with Dan Lee from Dentuit AIIntro to Deep Learning for Medical Image Analysis, with Dan Lee from Dentuit AI
Intro to Deep Learning for Medical Image Analysis, with Dan Lee from Dentuit AI
 
Artificial Intelligence in Healthcare Report
Artificial Intelligence in Healthcare Report Artificial Intelligence in Healthcare Report
Artificial Intelligence in Healthcare Report
 
Artificial Intelligence and Diagnostics
Artificial Intelligence and DiagnosticsArtificial Intelligence and Diagnostics
Artificial Intelligence and Diagnostics
 
Prospects of Deep Learning in Medical Imaging
Prospects of Deep Learning in Medical ImagingProspects of Deep Learning in Medical Imaging
Prospects of Deep Learning in Medical Imaging
 
Hybrid imaging
Hybrid imagingHybrid imaging
Hybrid imaging
 
Medical image processing studies
Medical image processing studiesMedical image processing studies
Medical image processing studies
 
Deep learning for medical imaging
Deep learning for medical imagingDeep learning for medical imaging
Deep learning for medical imaging
 
PET/MRI Current & Future Status
PET/MRI Current & Future StatusPET/MRI Current & Future Status
PET/MRI Current & Future Status
 
Magnetic Resonance Perfusion
Magnetic Resonance PerfusionMagnetic Resonance Perfusion
Magnetic Resonance Perfusion
 
AI in Healthcare | Future of Smart Hospitals
AI in Healthcare | Future of Smart Hospitals AI in Healthcare | Future of Smart Hospitals
AI in Healthcare | Future of Smart Hospitals
 
Distortion Artifacts in MRI and their correction
Distortion Artifacts in MRI and their correctionDistortion Artifacts in MRI and their correction
Distortion Artifacts in MRI and their correction
 
Application of ai in healthcare
Application of ai in healthcareApplication of ai in healthcare
Application of ai in healthcare
 

Similar to 5 Reasons Why Radiology Needs Artificial Intelligence

Similar to 5 Reasons Why Radiology Needs Artificial Intelligence (20)

Artificial Intelligence in Medicine.pdf
Artificial Intelligence in Medicine.pdfArtificial Intelligence in Medicine.pdf
Artificial Intelligence in Medicine.pdf
 
The Randomized Controlled Trial: The Gold Standard of Clinical Science and a ...
The Randomized Controlled Trial: The Gold Standard of Clinical Science and a ...The Randomized Controlled Trial: The Gold Standard of Clinical Science and a ...
The Randomized Controlled Trial: The Gold Standard of Clinical Science and a ...
 
New Frontiers in Applied NLP​ - PAW Healthcare 2022
New Frontiers in Applied NLP​ - PAW Healthcare 2022New Frontiers in Applied NLP​ - PAW Healthcare 2022
New Frontiers in Applied NLP​ - PAW Healthcare 2022
 
AI in Healthcare
AI in HealthcareAI in Healthcare
AI in Healthcare
 
fajar zaheer.docx
fajar zaheer.docxfajar zaheer.docx
fajar zaheer.docx
 
IVD Market Size and Growth Trend
IVD Market Size and Growth TrendIVD Market Size and Growth Trend
IVD Market Size and Growth Trend
 
Innovation In Medical Care
Innovation In Medical CareInnovation In Medical Care
Innovation In Medical Care
 
Circulating Tumor Cell, Cell Free DNA, Exosome and Vesicle Cancer Diagnostic ...
Circulating Tumor Cell, Cell Free DNA, Exosome and Vesicle Cancer Diagnostic ...Circulating Tumor Cell, Cell Free DNA, Exosome and Vesicle Cancer Diagnostic ...
Circulating Tumor Cell, Cell Free DNA, Exosome and Vesicle Cancer Diagnostic ...
 
Tct presentation final
Tct presentation finalTct presentation final
Tct presentation final
 
Eskulabs
EskulabsEskulabs
Eskulabs
 
Research Transcript
Research TranscriptResearch Transcript
Research Transcript
 
Diagnostic imaging market research report
Diagnostic imaging market research reportDiagnostic imaging market research report
Diagnostic imaging market research report
 
Webinar on AI in Medical Diagnosis with Emerging Technologies
Webinar on AI in Medical Diagnosis with Emerging TechnologiesWebinar on AI in Medical Diagnosis with Emerging Technologies
Webinar on AI in Medical Diagnosis with Emerging Technologies
 
Health technology forecasting
Health technology forecastingHealth technology forecasting
Health technology forecasting
 
Neuro Psycad
Neuro PsycadNeuro Psycad
Neuro Psycad
 
Artificial intelligence and Medicine - Copy.pptx
Artificial intelligence and Medicine - Copy.pptxArtificial intelligence and Medicine - Copy.pptx
Artificial intelligence and Medicine - Copy.pptx
 
Hamid_2016-2
Hamid_2016-2Hamid_2016-2
Hamid_2016-2
 
ai in clinical trails.pptx
ai in clinical trails.pptxai in clinical trails.pptx
ai in clinical trails.pptx
 
aiinclinicaltrails-221008052225-c7ed8a95.pdf
aiinclinicaltrails-221008052225-c7ed8a95.pdfaiinclinicaltrails-221008052225-c7ed8a95.pdf
aiinclinicaltrails-221008052225-c7ed8a95.pdf
 
System for Recommending Drugs Based on Machine Learning Sentiment Analysis of...
System for Recommending Drugs Based on Machine Learning Sentiment Analysis of...System for Recommending Drugs Based on Machine Learning Sentiment Analysis of...
System for Recommending Drugs Based on Machine Learning Sentiment Analysis of...
 

Recently uploaded

💚Chandigarh Call Girls Service 💯Piya 📲🔝8868886958🔝Call Girls In Chandigarh No...
💚Chandigarh Call Girls Service 💯Piya 📲🔝8868886958🔝Call Girls In Chandigarh No...💚Chandigarh Call Girls Service 💯Piya 📲🔝8868886958🔝Call Girls In Chandigarh No...
💚Chandigarh Call Girls Service 💯Piya 📲🔝8868886958🔝Call Girls In Chandigarh No...
Sheetaleventcompany
 
Call Girl in Chennai | Whatsapp No 📞 7427069034 📞 VIP Escorts Service Availab...
Call Girl in Chennai | Whatsapp No 📞 7427069034 📞 VIP Escorts Service Availab...Call Girl in Chennai | Whatsapp No 📞 7427069034 📞 VIP Escorts Service Availab...
Call Girl in Chennai | Whatsapp No 📞 7427069034 📞 VIP Escorts Service Availab...
amritaverma53
 
Ahmedabad Call Girls Book Now 9630942363 Top Class Ahmedabad Escort Service A...
Ahmedabad Call Girls Book Now 9630942363 Top Class Ahmedabad Escort Service A...Ahmedabad Call Girls Book Now 9630942363 Top Class Ahmedabad Escort Service A...
Ahmedabad Call Girls Book Now 9630942363 Top Class Ahmedabad Escort Service A...
Sheetaleventcompany
 
Pune Call Girl Service 📞9xx000xx09📞Just Call Divya📲 Call Girl In Pune No💰Adva...
Pune Call Girl Service 📞9xx000xx09📞Just Call Divya📲 Call Girl In Pune No💰Adva...Pune Call Girl Service 📞9xx000xx09📞Just Call Divya📲 Call Girl In Pune No💰Adva...
Pune Call Girl Service 📞9xx000xx09📞Just Call Divya📲 Call Girl In Pune No💰Adva...
Sheetaleventcompany
 
❤️Amritsar Escorts Service☎️9815674956☎️ Call Girl service in Amritsar☎️ Amri...
❤️Amritsar Escorts Service☎️9815674956☎️ Call Girl service in Amritsar☎️ Amri...❤️Amritsar Escorts Service☎️9815674956☎️ Call Girl service in Amritsar☎️ Amri...
❤️Amritsar Escorts Service☎️9815674956☎️ Call Girl service in Amritsar☎️ Amri...
Sheetaleventcompany
 
Cara Menggugurkan Kandungan Dengan Cepat Selesai Dalam 24 Jam Secara Alami Bu...
Cara Menggugurkan Kandungan Dengan Cepat Selesai Dalam 24 Jam Secara Alami Bu...Cara Menggugurkan Kandungan Dengan Cepat Selesai Dalam 24 Jam Secara Alami Bu...
Cara Menggugurkan Kandungan Dengan Cepat Selesai Dalam 24 Jam Secara Alami Bu...
Cara Menggugurkan Kandungan 087776558899
 

Recently uploaded (20)

Gastric Cancer: Сlinical Implementation of Artificial Intelligence, Synergeti...
Gastric Cancer: Сlinical Implementation of Artificial Intelligence, Synergeti...Gastric Cancer: Сlinical Implementation of Artificial Intelligence, Synergeti...
Gastric Cancer: Сlinical Implementation of Artificial Intelligence, Synergeti...
 
Low Cost Call Girls Bangalore {9179660964} ❤️VVIP NISHA Call Girls in Bangalo...
Low Cost Call Girls Bangalore {9179660964} ❤️VVIP NISHA Call Girls in Bangalo...Low Cost Call Girls Bangalore {9179660964} ❤️VVIP NISHA Call Girls in Bangalo...
Low Cost Call Girls Bangalore {9179660964} ❤️VVIP NISHA Call Girls in Bangalo...
 
💚Chandigarh Call Girls Service 💯Piya 📲🔝8868886958🔝Call Girls In Chandigarh No...
💚Chandigarh Call Girls Service 💯Piya 📲🔝8868886958🔝Call Girls In Chandigarh No...💚Chandigarh Call Girls Service 💯Piya 📲🔝8868886958🔝Call Girls In Chandigarh No...
💚Chandigarh Call Girls Service 💯Piya 📲🔝8868886958🔝Call Girls In Chandigarh No...
 
Call Girl in Chennai | Whatsapp No 📞 7427069034 📞 VIP Escorts Service Availab...
Call Girl in Chennai | Whatsapp No 📞 7427069034 📞 VIP Escorts Service Availab...Call Girl in Chennai | Whatsapp No 📞 7427069034 📞 VIP Escorts Service Availab...
Call Girl in Chennai | Whatsapp No 📞 7427069034 📞 VIP Escorts Service Availab...
 
tongue disease lecture Dr Assadawy legacy
tongue disease lecture Dr Assadawy legacytongue disease lecture Dr Assadawy legacy
tongue disease lecture Dr Assadawy legacy
 
Ahmedabad Call Girls Book Now 9630942363 Top Class Ahmedabad Escort Service A...
Ahmedabad Call Girls Book Now 9630942363 Top Class Ahmedabad Escort Service A...Ahmedabad Call Girls Book Now 9630942363 Top Class Ahmedabad Escort Service A...
Ahmedabad Call Girls Book Now 9630942363 Top Class Ahmedabad Escort Service A...
 
Pune Call Girl Service 📞9xx000xx09📞Just Call Divya📲 Call Girl In Pune No💰Adva...
Pune Call Girl Service 📞9xx000xx09📞Just Call Divya📲 Call Girl In Pune No💰Adva...Pune Call Girl Service 📞9xx000xx09📞Just Call Divya📲 Call Girl In Pune No💰Adva...
Pune Call Girl Service 📞9xx000xx09📞Just Call Divya📲 Call Girl In Pune No💰Adva...
 
❤️Amritsar Escorts Service☎️9815674956☎️ Call Girl service in Amritsar☎️ Amri...
❤️Amritsar Escorts Service☎️9815674956☎️ Call Girl service in Amritsar☎️ Amri...❤️Amritsar Escorts Service☎️9815674956☎️ Call Girl service in Amritsar☎️ Amri...
❤️Amritsar Escorts Service☎️9815674956☎️ Call Girl service in Amritsar☎️ Amri...
 
Circulatory Shock, types and stages, compensatory mechanisms
Circulatory Shock, types and stages, compensatory mechanismsCirculatory Shock, types and stages, compensatory mechanisms
Circulatory Shock, types and stages, compensatory mechanisms
 
Chandigarh Call Girls Service ❤️🍑 9809698092 👄🫦Independent Escort Service Cha...
Chandigarh Call Girls Service ❤️🍑 9809698092 👄🫦Independent Escort Service Cha...Chandigarh Call Girls Service ❤️🍑 9809698092 👄🫦Independent Escort Service Cha...
Chandigarh Call Girls Service ❤️🍑 9809698092 👄🫦Independent Escort Service Cha...
 
❤️Call Girl Service In Chandigarh☎️9814379184☎️ Call Girl in Chandigarh☎️ Cha...
❤️Call Girl Service In Chandigarh☎️9814379184☎️ Call Girl in Chandigarh☎️ Cha...❤️Call Girl Service In Chandigarh☎️9814379184☎️ Call Girl in Chandigarh☎️ Cha...
❤️Call Girl Service In Chandigarh☎️9814379184☎️ Call Girl in Chandigarh☎️ Cha...
 
Call Girls Shahdol Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Shahdol Just Call 8250077686 Top Class Call Girl Service AvailableCall Girls Shahdol Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Shahdol Just Call 8250077686 Top Class Call Girl Service Available
 
Call Girls Kathua Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Kathua Just Call 8250077686 Top Class Call Girl Service AvailableCall Girls Kathua Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Kathua Just Call 8250077686 Top Class Call Girl Service Available
 
Bhawanipatna Call Girls 📞9332606886 Call Girls in Bhawanipatna Escorts servic...
Bhawanipatna Call Girls 📞9332606886 Call Girls in Bhawanipatna Escorts servic...Bhawanipatna Call Girls 📞9332606886 Call Girls in Bhawanipatna Escorts servic...
Bhawanipatna Call Girls 📞9332606886 Call Girls in Bhawanipatna Escorts servic...
 
Cara Menggugurkan Kandungan Dengan Cepat Selesai Dalam 24 Jam Secara Alami Bu...
Cara Menggugurkan Kandungan Dengan Cepat Selesai Dalam 24 Jam Secara Alami Bu...Cara Menggugurkan Kandungan Dengan Cepat Selesai Dalam 24 Jam Secara Alami Bu...
Cara Menggugurkan Kandungan Dengan Cepat Selesai Dalam 24 Jam Secara Alami Bu...
 
ANATOMY AND PHYSIOLOGY OF RESPIRATORY SYSTEM.pptx
ANATOMY AND PHYSIOLOGY OF RESPIRATORY SYSTEM.pptxANATOMY AND PHYSIOLOGY OF RESPIRATORY SYSTEM.pptx
ANATOMY AND PHYSIOLOGY OF RESPIRATORY SYSTEM.pptx
 
Race Course Road } Book Call Girls in Bangalore | Whatsapp No 6378878445 VIP ...
Race Course Road } Book Call Girls in Bangalore | Whatsapp No 6378878445 VIP ...Race Course Road } Book Call Girls in Bangalore | Whatsapp No 6378878445 VIP ...
Race Course Road } Book Call Girls in Bangalore | Whatsapp No 6378878445 VIP ...
 
Chandigarh Call Girls Service ❤️🍑 9809698092 👄🫦Independent Escort Service Cha...
Chandigarh Call Girls Service ❤️🍑 9809698092 👄🫦Independent Escort Service Cha...Chandigarh Call Girls Service ❤️🍑 9809698092 👄🫦Independent Escort Service Cha...
Chandigarh Call Girls Service ❤️🍑 9809698092 👄🫦Independent Escort Service Cha...
 
❤️Chandigarh Escorts Service☎️9814379184☎️ Call Girl service in Chandigarh☎️ ...
❤️Chandigarh Escorts Service☎️9814379184☎️ Call Girl service in Chandigarh☎️ ...❤️Chandigarh Escorts Service☎️9814379184☎️ Call Girl service in Chandigarh☎️ ...
❤️Chandigarh Escorts Service☎️9814379184☎️ Call Girl service in Chandigarh☎️ ...
 
Call Girls Rishikesh Just Call 9667172968 Top Class Call Girl Service Available
Call Girls Rishikesh Just Call 9667172968 Top Class Call Girl Service AvailableCall Girls Rishikesh Just Call 9667172968 Top Class Call Girl Service Available
Call Girls Rishikesh Just Call 9667172968 Top Class Call Girl Service Available
 

5 Reasons Why Radiology Needs Artificial Intelligence

  • 1. 5 Reasons Why Radiology Needs Artificial Intelligence Created on October 25th, 2016 Simon Harris, Managing Director & Principal Analyst simon.harris@signifyresearch.net
  • 2. HealthTech Market Insights Powered by Data © 2016 Signify Research 2 Global shortage of radiologists1 5 Reasons why radiology needs artificial intelligence Enhanced productivity2 Better diagnostic accuracy3 Lower rates of misdiagnosis4 Improved patient outcomes5 Background The information in this presentation is taken from a market analysis report from Signify Research titled “Diagnostic Analytics – World Market – 2016 Edition”. See slide 10 for details.
  • 3. Reason 1 - Shortage of radiologists in many countries HealthTech Market Insights Powered by Data © 2016 Signify Research 3 US 105 DE 98 UK 49 ES 112 NG 2 BR 21 ZA 17 SA 35 AU 86 JP 46 In most countries there is an insufficient number of radiologists to meet the ever- increasing demand for imaging and diagnostic services The situation will get worse, as imaging volumes are increasing at a faster rate than new radiologists are entering the field. Cognitive computing techniques, such as neural networks, deep learning and predictive analytics, may help by improving the productivity of radiologists ≥100 radiologists per million population 50 - 99 radiologists per million population <50 radiologists per million population Sources: National radiology societies and government agencies. See slide 9 for details
  • 4. HealthTech Market Insights Powered by Data © 2016 Signify Research Reason 2 - Enhanced radiologist productivity 1 Smart alerts to regions of interest 2 Automatic image annotation and quantification 3 Faster access to patient information held in EHRs and other systems Compare readings with images, diagnoses and outcomes of similar cases4 Create draft reports for radiologists5 4
  • 5. Reason 3 - Better diagnostic accuracy HealthTech Market Insights Powered by Data © 2016 Signify Research 5 Reduces human error Accurately tracks the growth of lesions and tumours over time More quantitative and more objective diagnosis An automated second opinion Expedites early interventions
  • 6. HealthTech Market Insights Powered by Data © 2016 Signify Research 6 Reason 4 - Lower rates of misdiagnosis the average error rate of radiologists for unselected cases1 the average retrospective error rate of radiologists1 of radiologists in the US will face a lawsuit2 of the women who get annual mammograms over a 10- year period will have a false-positive finding3 4% 7% 50% The average radiologist reads approximately 15,000 cases per year.4 Assuming a 4% error rate, on average radiologists will misinterpret about 600 cases per year. Machine learning algorithms can alert radiologists to disease indicators. Cognitive computing can mine patient records and medical literature to provide radiologists with relevant information, and to compare new cases with existing ones. Radiologists suffer from fatigue, computers do not. 30%
  • 7. HealthTech Market Insights Powered by Data © 2016 Signify Research Reason 5 - Improved patient outcomes Problem Benefits of Cognitive Solutions Late detection and diagnosis of disease makes treatment less likely to succeed and reduces the chances of recovery Reduced reading times. Longer term, algorithms will be embedded in imaging scanners for immediate detection of disease at the time of the scan. Urgent cases are not always prioritised Review scans in real-time and automatically escalate priority cases within the radiologist’s reading queue. Incidental findings are often not followed-up Automatically read radiology reports to look for incidental findings, extract relevant information, schedule follow-up exams and prompt the referring physician to action the follow- ups recommended by the radiologist. 7
  • 8. HealthTech Market Insights Powered by Data Barriers to mainstream adoption of cognitive computing in radiology More clinical evidence is needed regarding the performance of machine learning algorithms in radiology applications Resistance from some radiologists who see cognitive computing as a threat High level of scepticism regarding existing (not machine learning based) computer aided detection solutions, e.g. CADe for mammography, due to “alert fatigue” The “black box” nature of machine learning algorithms can undermine radiologists’ confidence in the results The regulatory bodies, e.g. FDA and CE, have taken a cautious approach to approving solutions that use machine learning techniques Most of the current solutions are for specific use-cases, e.g. detection of lung nodules in chest CT scans, but radiologists typically require a comprehensive “tool kit” with a suite of algorithms capable of detecting a wide range of conditions across multiple modalities Machine learning algorithms for detection will gain acceptance in the coming years; however, it will likely be at least 5 years, and possibly many more, before computer-aided diagnosis becomes mainstream Machine learning algorithms for detection will gain acceptance in the coming years; however, it will likely be at least 5 years, and possibly many more, before computer-aided diagnosis becomes mainstream More clinical evidence is needed regarding the performance of machine learning algorithms in radiology applications Resistance from some radiologists who see cognitive computing as a threat High level of scepticism regarding existing (not machine learning based) computer aided detection solutions, e.g. CADe for mammography, due to “alert fatigue” The “black box” nature of machine learning algorithms can undermine radiologists’ confidence in the results The regulatory bodies, e.g. FDA and CE, have taken a cautious approach to approving solutions that use machine learning techniques Most of the current solutions are for specific use-cases, e.g. detection of lung nodules in chest CT scans, but radiologists typically require a comprehensive “tool kit” with a suite of algorithms capable of detecting a wide range of conditions across multiple modalities Potential for legal complications. What happens if the cognitive solutions gets it wrong? 8© 2016 Signify Research
  • 9. References HealthTech Market Insights Powered by Data © 2016 Signify Research 9 Estimates for the number of practicing radiologists by country were obtained from a variety of national radiology societies and government sources, including Royal College of Radiologists (UK), Société Française de Radiologie (France), Deutsche Röntgengesellschaft (Germany), Sociedad Espanola de Radiologia Medica (Spain), Radiological Society of South Africa, Association of Radiologists in Nigeria, Radiological Society of Saudi Arabia, The Royal Australian and New Zealand College of Radiologists, Japan Radiological Society, American College of Radiology, Colégio Brasileiro de Radiologia e Diagnóstico por Imagem (Brazil). Other references: 1. Radiology Quality Institute, Diagnostic Accuracy in Radiology: Defining a Literature-based Benchmark 2. Jena AB, Seabury S, Lakdawalla D, Chandra A. Malpractice risk according to physician specialty. N Engl J Med 2011;365(7):629–636. CrossRef, Medline 3. American Cancer Society 4. Bhargavan M, Kaye AH, Forman HP, Sunshine JH. Workload of radiologists in United States in 2006-2007 and trends since 1991-1992. Radiology. 2009;252:458-467.
  • 10. HealthTech Market Insights Powered by Data About Signify Research At Signify Research we are passionately curious about Healthcare Technology and we strive to deliver the most robust market data and insights, to help our customers make the right strategic decisions. We blend primary data collected from in-depth interviews with technology vendors and healthcare professionals, to provide a balanced and complete view of the market trends. Whether our research is delivered as an off-the-shelf report or as a consultancy project, our customers benefit from direct access to our Analyst team for an expert opinion when they need it. We encourage our clients to think of us as an extension to their in-house market intelligence team. Our major coverage areas are Healthcare IT, Medical Imaging and Digital Health. In each of our coverage areas, we offer a full suite of products including Market Reports, Customer Insights and Vendor Selection Tools, as well as custom research and consultancy services. Our clients include technology vendors, healthcare providers and payers, management consultants and investors. Find us on the web at www.signifyresearch.net. Simon Harris Managing Director & Principal Analyst Simon has 23 years of experience in technology market intelligence, having served as Executive Vice President at IMS Research, a leading source of research and analysis for the global technology industry. Whilst at IMS Research, Simon established the InMedica brand of medical market research. IMS Research was acquired by IHS Inc. in 2012 and Simon stayed on for four years as Senior Research Director for the company’s Technology market intelligence division. Simon left IHS in March 2016 to launch Signify Research. simon.harris@signifyresearch.net +44 1234 436 150 Diagnostic Analytics - World Market Report – 2016 Edition Signify Research recently published a detailed analysis of the use of artificial intelligence in clinical applications (Diagnostic Analytics). The report provides strategic insights and data on the current status and forecast development of the market and will answer the following questions: • Who is developing AI-based diagnostic tools? What is the status of their product development? Do they have regulatory approval? • What applications are vendors targeting? For each application, what is the value proposition? • What is the size of the market today and how fast will the market grow? • What are the major challenges with bringing AI-based tools to market and what strategies are vendors using to overcome them? • What are the views and perceptions of radiologists regarding AI-based diagnostic tools? Do they see them as an asset or a threat? Click here or contact Simon Harris for further information about the report.