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Shahadat Uddin
1. Network Analytics to Enable Healthcare
Decision Making
Dr Shahadat Uddin
Complex Systems Research Group
Faculty of Engineering & IT
The University of Sydney, Australia
Health Insurance Summit, 2017
2. Outline of this presentation
2
Healthcare stakeholders and Healthcare dataset
Network analysis principle
Healthcare dataset used for network analysis
Application scenario of network analytics for better decision making
Discussion and Conclusion
3. 3
Some facts about Healthcare data
Source: https://medtechengine.com/resource/big-data-and-healthcare-facts-and-figures/
Opportunity: This vast volume of healthcare data can be used for decision making
(1ZB=1012 GB)
4. Healthcare stakeholders
4
Healthcare
funders and
policy makers
Healthcare
Provider
Healthcare
Consumer
Patients
- GPs and Clinical specialists
- Pathology service providers
- Radiology and imaging
providers
- Pharmacies
- Community healthcare centres,
- Ambulance
- Public and private hospitals
- Aged care facilities
- Ancillary health service
providers (e.g., dentists,
physiotherapists, optometrists,
dieticians)
- Health insurance organisations
- Government policy makers
- They are in charge of
administering, monitoring and
funding of the whole healthcare
system.
5. Healthcare stakeholders (contd...)
5
Healthcare
funders and
policy makers
Healthcare
Provider
Healthcare
Consumer
In the modern healthcare environment, large amounts of electronic health data are
generated at every step of the process as the health consumer traverses through
the health system.
- Patient demographics
- Details of service(s) provided
- Laboratory and radiology results
- Drug prescription details
- Billing details
- Referral details, and
- Other associated establishment
costs, such as accommodation
costs and theatre charges.
6. Healthcare stakeholders (contd...)
6
Given the complex nature of the healthcare sector and the decisions that the
stakeholders have to make, the key questions to consider are:
(a) Do healthcare consumers have all the information they need to make informed
decisions about their healthcare choices?;
(b) Do service providers like doctors, hospitals, allied health workers, etc. have the
full data that enable them to provide continuity of care to their patients?; and
(c) Do healthcare funders like health insurers, government health departments and
health policy makers have a complete picture of the entire health data to make
informed decisions about healthcare costs and the quality of services provided?
7. Healthcare stakeholders (contd...)
7
As in other domains, health system managers use decision support systems
based on statistical analysis and predictive modelling techniques built around
health data repositories assembled from health services administrative data sets.
This presentation will show how methods and measures from network analytics
can reveal insight from this kind data that can effectively be used for healthcare
decision making
Different application scenarios (based on healthcare administrative data) will be
explained
10. Network analysis: measures and methods
10
A network is a group of two or more individuals or any other entities (e.g.
organisation) that are linked together.
In the figure below, two nodes are presented by two small circles and a link
shows the relation between them. The two nodes and a link between them form
a network.
11. Network analysis: measures and methods (contd..)
11
Node/Size = 4
Edge = 4
Missing edges = AD & BD
Total possible edges = 4 + 2 =6
Density = 4 ÷ 6 = 0.67
Network size and density
12. Network analysis: measures and methods (contd..)
12
Distance (A, C) = 1
Distance (A, B) = 1
Distance (A, D) = 2
A is connected to B & C
The maximum connectionA can
have is 3 (including D)
Degree centrality (A) = 2 ÷ 3 = 0.67
Similarly, Degree (D) = 1 ÷ 3 = 0.33
Distance from A to all other actors =
1 +1 + 2 = 4
Possible minimum distance from A to
all other actors = 3 (if A is directly
connected to all)
Closenesscentrality (A) = 3 ÷ 4
=0.75
Network centrality
13. Network analysis: measures and methods (contd..)
13
Network centralisation
A star network A line network
Most centralised Most (connected)
sparse
Centralisation tells whether the structure of a
given network is close to a ‘star’ or a ‘line’
14. Network analysis: measures and methods (contd..)
14
Clique and Subgroup analysis
In this figure, actors A, B, C and D form a clique as
they are directly connected among themselves
2-clique (‘a friend of a friend’): The actors B, D,
E, F and G form a 2-clique as they are connected
among themselves at a maximum distance of 2
Similarly, actors A, B, C, D, E and G form a 2-
clique as they are connected among themselves at
a maximum distance of 2
15. Research dataset
15
Provided by an Australian health insurance organisation
Patient (only those who had hospital admissions) health trajectory information has been
provided
Disease, socio-demographic and all other information related to hospital admissions of all
these patients have been provided
For a given disease, we defined ‘low cost’ and ‘high cost’ hospital. Here is the procedure
Find the average costfor all patients (suffering from the same disease)admitted to the hospital
underconsideration
In the sameway,we calculatedthe average costof a given diseasefor all hospitals
The hospitals thatbelong to the lowestquartile are defined as the ‘low cost’hospitals
The hospitals thatbelong to the highestquartile are definedas the ‘high cost’hospitals
16. Applied scenario of network analytics
16
1. Provider (physician) collaboration network
(a) Patient-physician network (b) Corresponding Physician network
Two physicians are link if at least one patient encounters both of them during a hospital admission
Figure:How to develop physician network from patient-physician interactions: (a) Patient-physician network;
and (b) Corresponding physician collaboration network
For each hospital, we created one physician collaboration network. The physician
collaboration network from a ‘low cost’ hospital will also be named as a ‘low cost’ physician
collaboration network and vice versa.
17. Applied scenario of network analytics (contd..)
17
1. Provider (physician) collaboration network (contd..)
Figure:(a) Patient-physician network; and (b) Corresponding physiciancollaboration network from the research
dataset
Network data for only hip replacement patients from different hospitals
18. Applied scenario of network analytics (contd..)
18
1. Provider (physician) collaboration network (contd..)
Figure:Comparisonof average value of Clique, 2-Clique and 2-Clan values betweenlow cost and high cost
physician collaborationnetworks.
19. Applied scenario of network analytics (contd..)
19
1. Provider (physician) collaboration network (contd..)
Findings
In low cost networks, physicians tend to
work in smaller groups (p<0.05).
Collaboration in large groups tends to
make the treatment cost high
20. Applied scenario of network analytics (contd..)
20
2. Team composition
Figure:Tripartite graph showing surgical teams composedof surgeons (red), assistant surgeons (light blue) and
anaesthetists (dark blue).
Network data for only knee surgery patients from different hospitals
There are some providers
working with several teams, while
some others work in smaller
tightly-knit teams as depicted by
a single triangle.
Node size indicates the number
of surgeries performed
A thicker line between two nodes
indicates that these two surgeons
had more patients in common.
The different clusters give an
indication of how they operate
as teams.
21. Applied scenario of network analytics (contd..)
21
2. Team composition (contd..)
Findings
Team structures where one surgeon
worked with larger number of teams appear
to have a lower average length of stay.
And in the case of tight cohesive teams, the
readmission rate appears lower.
22. Applied scenario of network analytics (contd..)
22
3. Understanding health trajectory using disease network
ConsiderType 2 diabetes patients
ICD-10 code has beenused to identify diabetes patients and the services they were provided over time
Figure: (a) Disease network of an individual patient from Administrative data. (b) An actual health trajectory (Baseline Network) of
chronic disease (type-2 diabetes) patients. Nodes indicate diseases or medical condition. Label size is proportional to prevalence.
Proximity of the nodes is proportional to the comorbidity i.e., closer nodes indicate they occurred together more frequently. There
were 31 comorbidities (Garland et al., 2012). However, 2 of them are directly related to diabetes
23. Applied scenario of network analytics (contd..)
23
3. Understanding health trajectory using disease network (contd..)
Different methods
- Graph similarity matching
- Graph node matching
- Cluster matching
- Parameter estimation
Figure:Disease riskpredictionforindividual patients
24. Applied scenario of network analytics (contd..)
24
3. Understanding health trajectory using disease network (contd..)
Findings
The baseline network has been found
very useful in understanding the
health trajectory of individual patients
In fact, using the baseline network
from diabetic patients, future diabetes
risk of patients can be predicted with
very high accuracy (>85%)
25. Summary of findings
25
Provider (physician) collaboration network
Collaborations in small group tend to make the treatment cost low’
Team composition
Team structure has been found to have impact on length of stay and readmission rate
Understanding health trajectory using disease network
Baseline disease network can effectively predict future disease risk
26. Discussion and Conclusion
26
The three applications illustrate the potential capability of network analytics to analyse and
visualise information in new ways that enable evidence-based healthcare decision making.
Network level measures such as density and network distance can provide valuable
understanding of the nature of connections or ties among the actors of the network and the
time it would take to propagate a piece of information across the entire network.
Sub-group analysis techniques such as clique analysis can provide ways of understanding the
impact of microstructures or small groups within a larger community of providers.
Governments all over the world are shifting the healthcare paradigms towards e-Health based
system.
This means that data will be stored and transmitted in a more transparent and accessible ways
that can open a new frontiers of data mining research in order to deliver best possible health
outcome to a world which may face a more extensive burden of chronic disease.
The tremendous potential of network based analytics can be exploited in all of these new
frontiers that are opening up with the availability of data, in order to effectively deliver quality
care and aid in policy making by the stakeholders.