Top Banner
1 Sujan Perera Kno.e.sis Center, Wright State University Big Data and Smart Healthcare Wright State Honors Institute Symposium
15

Big Data and Smart Healthcare

Jan 09, 2017

Download

Engineering

Sujan Perera
Welcome message from author
This document is posted to help you gain knowledge. Please leave a comment to let me know what you think about it! Share it to your friends and learn new things together.
Transcript
Page 1: Big Data and Smart Healthcare

1

Sujan PereraKno.e.sis Center, Wright State University

Big Data and Smart Healthcare Wright State Honors Institute Symposium

Page 2: Big Data and Smart Healthcare

Healthcare is Changing

• Introduction of new federal rules and incentive programs• Hospitals are forced to change the process (30-day

readmission, ICD10 adaptation, quality measures) • Free and Open health information• Rise of discussions/forums/social media• 70-75% Americans online have used internet to find

health information1

• Rapid growth of health related devices• Variety of cheap sensors for health status/activity

monitoring• IBM Watson• Adaptation of Watson technology to Healthcare

1 http://www.additiveanalytics.com/blog/infographic-healthcare-social-media

Page 3: Big Data and Smart Healthcare

Challenges on the way

• Huge amount of data being generated• Scientific knowledge, social forums, patient records

• Variety of data formats (text, images, videos)• Find the signal from noise (actionable information)• Expert can’t keep up with the new information• Need expert knowledge to interpret data (esp.

combination of observations)• Trustworthiness• Especially on social forums

• Privacy

Page 4: Big Data and Smart Healthcare

It is clear that we need mechanisms to automate some parts of data processing and help humans in decision

making.

This talk will concentrate on how to improve the machine understanding of unstructured data

Page 5: Big Data and Smart Healthcare

Structured vs Unstructured Data

Patient Disorders ICD-9 Code

Patient1 Hypertension 401

Patient2 Atrial fibrillation 427.31

Patient1 Pulmonary hypertension 416

Patient3 Edema 782.3

Patient4 hyperthyroidism 242.9

Coronary artery disease, status post four-vessel coronary artery bypass graft surgery on , by Dr. X with a left internal mammary artery to the left anterior descending artery, sequential vein graft to the ramus and first diagonal, and a vein graft to the posterior descending artery. He had normal left ventricular function. He is having some symptoms that are unclear if they are angina or not. I am therefore going to get him scheduled for an exercise Cardiolite stress test.

VS

Page 6: Big Data and Smart Healthcare

• Structured data is incomplete and not accurate2,3

• 80% of patient data is unstructured1

• Stake holders interested in unstructured data• Medical professionals• Scientists• Insurance Companies• Policy makers

• Interesting Applications• Search• Prediction• Applications like CAC and CDI• Data and knowledge mining• Decision Support

Unstructured Data

1 http://www.zdnet.com/within-two-years-80-percent-of-medical-data-will-be-unstructured-70000137072Strengths and Limitations of CMS Administrative Data in Research3Comparison of clinical and administrative data sources for hospital coronary artery bypass graft surgery report cards

Page 7: Big Data and Smart Healthcare

Patient Data Distribution

Structured data

Unstructured data

Lab resultsHbA1C, BP,

ECG

Page 8: Big Data and Smart Healthcare

• Key indicators for readmission prediction reside in unstructured patient notes• facilities

• “Holter monitor was ordered by Lisa. She failed to get this because she did not have transportation”

• non-compliance• “Atrial fibrillation with poorly controlled ventricular rate due

to noncompliance.”• financial status

• “The patient mentioned that Bystolic is expensive and cannot afford it now.”

How Important is Unstructured Data

Page 9: Big Data and Smart Healthcare

• ICD10 adaptation – need to understand the relationships E08 - Diabetes mellitus due to underlying condition

E08.0 - Diabetes mellitus due to underlying condition with hyperosmolarity E08.00 - without nonketotic hyperglycemic-hyperosmolar coma (NKHHC) E08.01 - with coma

E08.1 - Diabetes mellitus due to underlying condition with ketoacidosis E08.10 - without coma E08.11 – with coma

• The underlying condition can be congenital rubella, Cushing's syndrome, cystic fibrosis, malignant neoplasm, malnutrition, pancreatitis

How Important is Unstructured Data

Page 10: Big Data and Smart Healthcare

Search Mining

Decision Support

Knowledge Discovery Prediction

NLP +

Semantics

The Solution

Page 11: Big Data and Smart Healthcare

• Semantic Web– Provides a common framework that allows data to

be shared and reused across application, enterprise, and community boundaries

– Offers mechanisms to query data and reason over them

• Natural Language Processing– Enable computers to understand natural language

input

The Solution

Page 12: Big Data and Smart Healthcare

An Example

He is off both Diovan and Lotrel. I am unsure if it is due to underlying renal insufficiency. He has actually been on atenolol alone for his hypertension.

Raw Text

Concepts

Knowledge

Inference

diovan lotrel renal insufficiency atenolol hypertension

diovanvaltuna

valsartan

antihypertensive agent

atenolol

tenominatenix kidney failure

renal insufficiency

kidney disease

disorder

blood pressure disorder

hypertension

systoloc hypertension

pulmonary hypertension

Patient taking diovan for hypertension

Patient has kidney disease

Patient is on antihypertensive drugs

is used to treat

is a

drug

disorder

Page 13: Big Data and Smart Healthcare

cTAKESezNLP

ezKB<problem value="Asthma" cui="C0004096"/><med value="Losartan" code="52175:RXNORM" /><med value="Spiriva" code="274535:RXNORM" /><procedure value="EKG" cui="C1623258" />

ezFIND ezMeasure ezCDIezCAC

www.ezdi.us

ezHealth Platform

Page 14: Big Data and Smart Healthcare

Health Outcome Prediction

Page 15: Big Data and Smart Healthcare

Thank YouVisit us: www.knoesis.org