Title: Topic 4
1 Topic 4 Before-After Studies CEE 763
2BEFORE-AFTER STUDIES
- Experiment
- Controlled environment
- e.g. Physics, animal science
- Observational Study
- Cross-Section (e.g., stop vs. yield)
- Before-After
- Ezra Hauer, Observational Before-After Studies
in Road Safety, ISBN 0-08-043053-8
3WHAT IS THE QUESTION
- Treatment a measure implemented at a site for
the purpose of achieving safety improvement. - The effectiveness of a treatment is the change in
safety performance measures purely due to the
treatment. - It is measured by the difference between what
would have been the safety of the site in the
after period had treatment not been applied
and what the safety of the site in the after
period was.
4AN EXAMPLE
- R.I.D.E. (Reduce Impaired Driving Everywhere)
Program
5FREQUENCY OR RATE?
Expected of Accidents/ year
C
Without Rumble Strip
B
A
With Rumble Strip
AADT
- What conclusions would you make by using rate or
frequency?
6TARGET ACCIDENTS
- Target accidents Those accidents the occurrence
of which can be materially affected by the
treatment. - Case 1 R.I.D.E
- An enforcement program in Toronto to reduce
alcohol-related injury accidents - Target accidents alcohol-impaired accidents or
total accidents?
7TARGET ACCIDENTS (continued)
- Case 2 Sound-wall effect
- The study was to look at whether the construction
of sound-walls increased crashes or not. - Target accidents run-off-the-road accidents or
total accidents?
8TARGET ACCIDENTS (continued)
- Case 3 Right-turn-on-red policy
- The study was to look at whether allowing
vehicles to make right turns on red increased
crashes or not. - Target accidents accidents that involve at least
one right-turn vehicle or total accidents?
9RIGHT-TURN-ON-RED CASE
- Case 3 Right-turn-on-red policy
Target Comparison
Before 167 3566
After 313 6121
Comparison accidents are those that do not
involve any right-turn vehicles
Right-turn Other Total
Before 2192 28656 30848
After 2808 26344 29152
Other accidents are those that do not involve
any right-turn vehicles
10PREDICTION AND ESTIMATION
- Prediction to estimate what would have been the
safety of the entity in the after period had
treatment not been applied. - Many ways to predict.
- Estimation to estimate what the safety of the
treated entry in the after period was.
11PREDICTION
- One-year before (173)
- Three-year before average (184)
- Regression (165)
- Comparison group (160)
12FOUR-STEP PROCESS FOR A B-A STUDY
- Step 1 Estimate ? and predict p
- ? is the expected number of target accidents in
the after period - p is what the expected number of target accidents
in an after period would have been had it not
been treated - Step 2 Estimate VAR? and VARp
- Step 3 Estimate d and ?
- d is reduction in the expected number of
accidents - ? is safety index of effectiveness
- Step 4 Estimate VARd and VAR?
13EQUATIONS
14EXAMPLENAÏVE BEFORE-AFTER STUDY
- Consider a Naïve B-A study with 173 accidents in
the before year and 144 accidents in the
after year. Determine the effectiveness of the
treatment.
15COMPARISON GROUP (C-G) B-A STUDY
- Comparison group a group of sites that did not
receive the treatment - Assumptions
- Factors affecting safety have changed from
before to after in the same manner for the
treatment group and the comparison group - These factors influence both groups in the same
way - Whatever happened to the subject group (except
for the treatment itself) happened exactly the
same way to the comparison group
16EXAMPLE
- Where R.I.D.E. was implemented, alcohol-related
crash was changed from 173 (before) to 144
(after). Where R.I.D.E. was NOT implemented,
alcohol-related crash was changed from 225
(before) to 195 (after). What would be the crash
in the after period had R.I.D.E. not been
implemented?
17C-G METHOD
Treatment Group Comparison Group
Before K M
After L N
Odds ratio
18EQUATIONS
19EXAMPLE
- The table shows the accident counts for the
R.I.D.E. program at both treatment sites and
comparison sites.
Treatment Group Comparison Group
Before K173 M897
After L144 N870
20THE EB METHOD
EB estimate of the expected number of after
accidents had the treatment not been implemented.
Y is the ratio between before period and
after period
If not giving, use the actual counts K (before
period) to estimate population mean, Ek
s2 is sample variance for the before period
Variance if before has multiple years
21EXAMPLE
- Accidents recorded at 5 intersections over a
two-year period are shown in the table. What is
the weighting factor, a for the EB method?
Site Accident
1 0
2 3
3 2
4 0
5 1
22EQUATIONS
23EXAMPLE
- Using the EB method to conduct the B-A study
based on the information in the table.
1 Site 2 Before 3 After 4 K 5 L 6 K(acc/er yr) 7 L (acc/ yr) 8 Ek - reference sites Acc/yr 9 S2 acc/yr2 10 VARk acc/yr2 11 a 12 Ek/K
1 71-73 75-77 14 6 4.67 2.00 0.092 0.151 0.06 0.34 3.10
2 73-75 77-79 16 3 0.091 0.146
3 71-73 75-77 18 6
4 71-73 75-77 28 7
5 71-73 75-77 15 3
6 72-74 76-78 28 1 0.091 0.153
7 75-76 78-79 4 0 2.00 0.00 0.093 0.145 0.05 0.47 1.10
8 71-73 75-77 11 3
9 75-76 78-79 6 2
10 72-74 76-78 6 2