Sanders hasanohiogis conf

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Three Times a Week: Mapping the Transportation of Dialysis Patients Dayton, Ohio Ambreen Hasan Research Analyst Lakeland Community College 2013 Ohio GIS Conference September 11 - 13, 2013 | Columbus Marriott Northwest | Dublin, Ohio Langdon Sanders GIS Technician City of Kettering, OH

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Three Times a Week: Mapping the Transportation of Dialysis Patients in Dayton, Ohio. Presented at Ohio GIS Conference, 2013. Dublin, Ohio. Capstone project for MPA program at Wright State University

Transcript of Sanders hasanohiogis conf

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Three Times a Week: Mapping the Transportation of Dialysis Patients Dayton, Ohio

Ambreen Hasan

Research Analyst

Lakeland Community College

2013 Ohio GIS Conference

September 11 - 13, 2013 | Columbus Marriott Northwest | Dublin, Ohio

Langdon Sanders

GIS Technician

City of Kettering, OH

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Three Times a Week:

Mapping the Transportation of Dialysis Patients in the Greater Dayton Area

Ambreen Hasan and Langdon Sanders

Sponsored by

Ohio GIS Conference, Sept. 13, 2013

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• Examine current transportation system for dialysis patients in Montgomery, Miami & Greene co.

• Inform Transit, Medical, and Public communities

– Identify Target Areas, Issues & Challenges

Towards Improving Service, Reducing Cost

Purpose

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Research Questions • Where are the patients?

– “Hot Spots” and rideshare possibilities

• How do they travel to dialysis? – Field Observation, Patient Survey

• Are they going to the closest center?

Raw Data to Master Table

Pickup/Dropoff, Provider, Trip_ID . . .

Geocode Origin & Destination Addresses

Mapping Analysis

via unique TRIP IDs

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Direct Observation Findings

51%

10% 16%

1%

22%

PersonalVehicle

RTA (Projectmobility)

Ambulette(E.M.T.,

America,Medcorps)

GreeneCATS Taxi/Van

How People Travel to Dialysis (n=77)

*Observations done at the two centers located in Dayton *Data includes both arriving and departing vehicles from the center

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Selected Survey Results

White 32%

Black / Afro-

Ameri…

Asian 4% Other 2%

Race

29%

20%

2%

6%

41%

2%

drove self / family

Proj. Mob RTA

Reg. RTA bus

Ambulette

TaxiVan paid by Med/Ins

Senior Center

How Patients Travel to Dialysis

74% 53%

16%

Dr. Rec Convenient Dist. Customer Serv.

Top 3 Reasons for Choosing the Current Center

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Geocoded points by transit provider

Where are the Patients?

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Created a density surface using Spatial Analyst

Notes:

• We used kernel density

• Pick a search radius

– play with results

• Cell size det. ‘smoothness’

• Lowest color empty

Where are the ‘hotspots’?

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Areas with high percentages of households without a vehicle

Accessibility to Personal Transport

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Density of Patients & Public Bus Routes

Accessibility to Public Transport

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• Geocoded PickUp & DropOff Addresses, dialysis centers

• XY to Line tool

– Org. Dest.

– Kept TRIP_ID

• Distance Traveled

• Nearest Center

• Ratio of distance

– Actual / Closest

• Results – 2/ 2 = 1.000

– Or 2.5/ 2 = 1.25

Travel Efficiency: Closest Dialysis?

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• 40% not going to nearest center – Weighted by GDRTA with 111 trips

88%

86%

53%

45%

12%

14%

47%

55%

Greene CATS (n=17)

MCPT (n=51)

Anton's Transportation(n=30)

Greater Dayton RTA(n=111)

Percent Travelling to Nearest Center by Provider (n=210)

Yes No

Nearest Center Results

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RideShare Analysis: Day & Provider

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RideShare Analysis: Day & Provider

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RideShare Analysis: Day & Provider

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RideShare Analysis: Day & Provider

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Where do we go from here?

Patients

• Educate & empower of options available (such as where other centers are located & rideshare opportunities)

Transit Providers

• Further study

• Show mismatch of service duplication and inefficiencies

• Avoid trip duplication

• Promote rideshare

• Talk with other providers

Medical Community

• Work with patients to ID willingness to change

• Explain dialysis center assignment process - include transportation in decision

• ID where changes can/cannot be made

Implications for Decision Makers

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• Only part of the system – Data from RTA, Anton’s, Greene CATS, MCPT and

Fairborn Sen. Center.

• Straight lines distance used instead of actual distance. – Easy, does not require network

• Different date ranges of data.

• Surveyed & Observed only two centers – both in Montgomery County

Limitations & Thoughts for Future

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Ambreen Hasan

Research Analyst

Lakeland Community College

[email protected]

Langdon Sanders

GIS Technician

City of Kettering

[email protected] (937)296-3209

Thank you.