Clinical applications of Machine learning in Radiology: Pubrica.com - PowerPoint PPT Presentation

About This Presentation
Title:

Clinical applications of Machine learning in Radiology: Pubrica.com

Description:

Machine learning serves as one of the vital quantitative tools that serve as better biomarkers in the radiological diagnosis of diseases. By survey ML frameworks as a teammate, not as a contender, future radiologists could profit by an organization. Learn More: Contact us: Web: Blog: Email: sales@pubrica.com WhatsApp : +91 9884350006 United Kingdom : +44-1143520021 – PowerPoint PPT presentation

Number of Views:174

less

Transcript and Presenter's Notes

Title: Clinical applications of Machine learning in Radiology: Pubrica.com


1
CLINICAL APPLICATIONS OF MACHINE LEARNING IN
RADIOLOGY
An Academic presentation by Dr. Nancy Agens,
Head, Technical Operations, Pubrica
Group www.pubrica.com Email sales_at_pubrica.com
2
Today's Discussion
Outline of Topics In brief Introduction Screening
of Patients and the Absence Register
Acquisition of Images Segmentation of Medical
Images
Registration of Medical ImagesConclusion Computer-
Aided Detection Mind Capacity or Action
Examination Conclusion Future Scopes
3
In Brief
Radiology an important tool in the diagnosis of
clinical diseases. Machine learning and its
techniques relevance in the field of radiology.
Machine learning and its applications in
Radiology. Translation of machine learning onto
radiology, factors impacting the same.
4
Introduction
In the recent times, there has been a vast
advancement in the field of science and
technology, the current boom is of the era of
artificial intelligence, big data and machine
learning. Machine learning serves as one of the
vital quantitative tools that serve as better
biomarkers in the radiological diagnosis of
diseases. Machine learning is defined as the
encompasses of a wide array of the advanced and
iterative statistical methods that are used to
discover the various patterns in the data .
5
Fig 1. Machine learning to Radiology
6
Screening of Patients and the Absence Register
Maintaining a record of the high-risk patients
and tracking them who have missed the
radiological appointments and hence rectifying
the same for screening.
7
Acquisition of Images
This could be time saving measure both for the
patients and the health care provider was in
place an automatic process could save time.
8
Segmentation of Medical Images
Medical images contain many structures, including
normal structures such as muscles, organs,
bones, fat, and abnormal structures such as
fractures and tumours. Segmentation is the
process of identifying normal and abnormal
structures both, in the images.
9
Registration of Medical Images
Machine learning can aid in Image registration.
During a medical examination, different imaging
modalities were used for scanning the patient.
10
Computer-Aided Detection and the Diagnostic
Systems for MRI and CT Images
  • It helps the radiologists in the interpretation
    of medical images, computer- aided diagnosis
    (CADx and computer-aided detection (CADe) and
    also to provide an effective way to reduce the
    overall reading time, increasing the detection
    sensitivity, and thus the improved diagnostic
    accuracy.

11
Mind Capacity or Action Examination and
Neurological Infection Determination from FMR
Pictures
Brain capacity and action investigation are
inquired significant jobs in inquiring the
comprehension, brain research, and cerebrum
malady finding. Utilitarian attractive
reverberation imaging (fMRI) gives a noninvasive
and compelling approach to evaluate cerebrum
movement.
12
Content Investigation of Radiology Reports Utilizi
ng Nlp/Nlu
  • Another utilization of AI in radiology is the
    handling of radiology content reports.
  • The collected reports from day by day radiology
    practice fill enormous content databases.
  • Misusing these radiology report databases by
    utilizing present data handling advances may
    improve report search and recovery and help
    radiologists in analysis8.
  • AI calculations could support radiologists and
    technologists with making portion gauges
  • before tests.

13
Conclusion
It is not that much clear that ML algorithms in a
very much relatively well-defined field as in
the field of medical imaging will necessarily
experience such an astronomical growth pattern
as observed in other fields. Current practicing
radiologists have already begun to incorporate
all the various kinds of technology, including
collaborative tools for consultation,
three-dimensional imaging display tools, and
quantitative analysis, digital imaging resources.
14
Future Scopes
Future AI instruments hold the guarantee of
further extending the work that radiologists can
do, remembering for the domains of exactness
(customized) drug and populace the board. By
survey ML frameworks as a teammate, not as a
contender, future radiologists could profit by
an organization where the consolidated
presentation of the radiologist-PC group would
almost certainly be better. This would give
benefits not exclusively to the experts of
analytic radiology, yet much more significantly
for our patients and for society.
15
Contact Us
UNITED KINGDOM 44-1143520021 INDIA 91-
9884350006 EMAIL sales_at_pubrica.com
Write a Comment
User Comments (0)
About PowerShow.com