Yearly Traffic Safety Analysis

159 CRASHES IN
GEORGETOWN, MA
2024

All metrics benchmarked against2023

In Georgetown, total traffic crashes rose from 133 in 2023 to 159 in 2024, a 19.5% increase. While the overall crash volume grew, the number of fatalities remained unchanged at one for both years. The most notable year-over-year shift was this overall rise in collisions.

159

19.5%was 133

Total Crash Events

1

Persons Killed

34

6.3%was 32

Persons Injured

6

50.0%was 4

Hit-and-Run Crashes

Note: "Persons Killed" (1) counts individual fatalities across all crash events. "Fatal" in the severity table below (1) counts crash events where at least one fatality occurred. A single crash can result in multiple fatalities. 1 crash with unreported severity is not shown in the severity breakdown.

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Aggregate counts from crash, person, and vehicle records

Trend Summary

Overall crash trends in Georgetown show an increase year-over-year. Total collisions rose by 19.5%, from 133 in 2023 to 159 in 2024. The number of people injured saw a smaller increase of 6.3%, from 32 to 34, while fatalities held steady with one death recorded in both periods.

6

Hit-and-Run Crashes — 2024

50.0% vs prior (4)

Hit-and-run crashes trended upward year-over-year. The total count of hit-and-run incidents increased by 50%, from 4 in the prior period to 6 in the current period. Correspondingly, the hit-and-run rate per 100 crashes rose from 3.0 to 3.8.

Vulnerable Road User Casualties

1

Motorists Killed

Prior: 10.0%

34

Motorists Injured

Prior: 3013.3%

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Mode classified from person records (driver/passenger → motorist; pedestrian; bicyclist → cyclist; in-line skater / unspecified → other)

When Crashes Happen

The temporal patterns of crashes shifted between the two periods. The day with the highest number of crashes moved from Thursday (29 crashes) in the prior year to Monday (31 crashes) in the current year. Similarly, the peak hour for collisions shifted from 1 p.m. (14 crashes) in 2023 to 2 p.m. (16 crashes) in 2024.

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Crash date field aggregated by weekday

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Crash time field aggregated by hour (0-23)

Crash Severity Breakdown

While the number of fatal crashes remained constant at one in both years, the fatal crash rate per 100 crashes decreased from 0.75 to 0.63 due to the higher total crash volume in the current period. The proportion of crashes resulting in any level of injury was stable, accounting for 18.0% of crashes in the prior year and 18.2% in the current year.

Outcome by Severity (Crash Events)

Fatal1fatal crashes0.6%
0.0%prior 1
Minor Injury18minor injury crashes11.3%
12.5%prior 16
Possible Injury10possible injury crashes6.3%
150.0%prior 4
No Injury129no injury crashes81.1%
18.3%prior 109

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · KABCO injury classification scale

Severity Distribution (Crash Events)

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Most severe injury per crash record

Top Contributing Factors

The top three contributing factors remained consistent across both years: "No improper driving," "Inattention," and "Failed to yield right of way." Crashes attributed to "Inattention" increased in count from 14 to 19, a 35.7% rise in count. Crashes where "No improper driving" was cited also grew from 48 to 61, a 27.1% increase in count.

Officer-Reported Primary Contributing Cause

No improper driving61 (38.4%)27.1%prior 48
Inattention19 (11.9%)35.7%prior 14
Failed to yield right of way13 (8.2%)18.2%prior 11
Followed too closely6 (3.8%)
Driving too fast for conditions6 (3.8%)20.0%prior 5
Visibility obstructed5 (3.1%)
Failure to keep in proper lane or running off road5 (3.1%)-37.5%prior 8
Operating vehicle in erratic, reckless, careless, negligent or aggressive manner5 (3.1%)
Over-correcting/over-steering5 (3.1%)
Fatigued/asleep5 (3.1%)

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Officer-reported primary contributory cause per crash

Road & Environmental Conditions

The distribution of crashes across environmental conditions remained largely stable year-over-year. In both periods, the majority of incidents occurred during daylight (70.7% in 2023 vs. 69.8% in 2024) and on dry road surfaces (76.7% vs. 74.8%). There were no significant shifts in the proportion of crashes occurring in adverse conditions.

Weather

Clear114 (72.2%)
26.7%prior 90
Cloudy12 (7.6%)
-33.3%prior 18
Snow8 (5.1%)
14.3%prior 7
Rain6 (3.8%)
-33.3%prior 9
Clear/Clear5 (3.2%)
Cloudy/Rain4 (2.5%)
Snow/Sleet, hail (freezing rain or drizzle)2 (1.3%)
Snow/Blowing sand, snow2 (1.3%)
Rain/Sleet, hail (freezing rain or drizzle)1 (0.6%)
Sleet, hail (freezing rain or drizzle)1 (0.6%)

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Weather condition at time of crash

Lighting

Daylight111 (69.8%)
18.1%prior 94
Dark - lighted roadway20 (12.6%)
33.3%prior 15
Dark - roadway not lighted14 (8.8%)
27.3%prior 11
Dawn7 (4.4%)
Dusk6 (3.8%)
-14.3%prior 7
Dark - unknown roadway lighting1 (0.6%)

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Lighting condition field

Road Surface

Dry119 (74.8%)
16.7%prior 102
Wet23 (14.5%)
4.5%prior 22
Snow13 (8.2%)
85.7%prior 7
Ice3 (1.9%)
Slush1 (0.6%)

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Road surface condition field

Vehicles & Demographics

Vehicle and person demographics showed some shifts between periods. The most frequently involved age group for persons in crashes changed from 26-34 in the prior year (48 people) to 35-44 in the current year (59 people). While Toyota and Ford remained the top two vehicle makes involved in collisions, Honda (27 vehicles) replaced Chevrolet as the third most common make in 2024.

Top Vehicle Makes (252 vehicles)

1
TOYOTA43 (17.1%)
10.3%prior 39
2
FORD39 (15.5%)
8.3%prior 36
3
HONDA27 (10.7%)
28.6%prior 21
4
CHEVROLET20 (7.9%)
-20.0%prior 25
5
NISSAN14 (5.6%)
16.7%prior 12
6
ACURA9 (3.6%)
7
SUBARU9 (3.6%)
-18.2%prior 11
8
MAZDA7 (2.8%)
9
VOLKSWAGEN6 (2.4%)
-14.3%prior 7
10
KIA6 (2.4%)
20.0%prior 5

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Vehicle unit records

12 persons with unknown or unrecorded age excluded from age chart.

Sex Distribution (321 persons with recorded sex)

Male175 (54.5%)
15.9%prior 151
Female146 (45.5%)
18.7%prior 123

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Person-level records linked to crash events

Speed Limit Zones

The distribution of crashes across different speed zones was consistent, with approximately three-quarters of incidents in both years occurring in zones posted at 35 mph or less. However, the location of the single fatal crash shifted from a 35 mph zone in 2023 to a 50 mph zone in 2024.

Fatal crashes by zone: 50 mph: 1 of 3 (33.333%)

Source: Massachusetts Crash Data (MassDOT CDV) · Arcgis_yearly Open Data · 2024-01-01 to 2024-12-31 · Posted speed limit at crash location

Data Sources & Methodology

Primary Data Source

All crash data in this report is sourced from Massachusetts Crash Data (MassDOT CDV), accessed programmatically via the Arcgis_yearly Open Data API (SODA). This dataset contains official police-reported motor vehicle traffic crash records maintained by the reporting jurisdiction's law enforcement agency. Records are published to the open data portal by the municipality and are subject to the portal's terms of use.

Data Retrieval

  • Access method: Arcgis_yearly Open Data API (SoQL queries)
  • Data format: Structured JSON via REST API
  • Record types queried: Crash events, person records, and vehicle unit records
  • Date filter applied: 2024-01-01 through 2024-12-31
  • Report generated: June 21, 2026

Data Coverage

  • Reporting period: 2024-01-01 through 2024-12-31 (366 days)
  • Geographic scope: GEORGETOWN, MA
  • Total crash records analyzed: 159
  • Total persons involved: 332
  • Total vehicles involved: 252

Analytical Methodology

  • Severity classification: Uses the KABCO injury scale (K=Fatal, A=Incapacitating injury, B=Non-incapacitating injury, C=Possible injury, O=No injury/property damage only), the standard classification in U.S. Model Minimum Uniform Crash Criteria (MMUCC). Severity is assigned per crash event based on the most severe injury in that crash. A single fatal crash (K) may involve multiple fatalities; therefore the "Persons Killed" count in the headline KPIs may differ from the "Fatal" crash count in the severity breakdown.
  • Contributing factors: Reflect the officer-determined primary contributory cause recorded at the time of the crash report. These are preliminary determinations and may not reflect final investigation findings.
  • Hit-and-run classification: Based on the hit-and-run indicator field in the official crash report, as determined by the responding officer at the scene.
  • Temporal analysis: Day-of-week and hour-of-day distributions are computed from the crash date/time timestamp in each record.
  • Demographics: Age and sex distributions are drawn from person-level records linked to each crash event. A single crash may involve multiple persons.
  • Vehicle data: Make information is drawn from vehicle unit records linked to each crash event.
  • AI commentary: Narrative sections are generated by Google Gemini (large language model) based on the structured data. Commentary is descriptive, not predictive, and should not be interpreted as expert opinion.

Limitations & Disclaimers

  • Only crashes reported to and documented by law enforcement are included. Minor incidents, unreported crashes, and near-misses are not captured in this dataset.
  • Data reflects conditions at the time of the initial police report and may be subject to subsequent corrections, reclassifications, or supplements by the reporting agency.
  • Open data portal records may experience a publication lag - recently occurring crashes may not yet appear in the dataset at the time of report generation.
  • AI-generated commentary is produced by a large language model and is intended to highlight patterns in the data. It does not constitute legal, medical, or professional analysis.
  • Percentages are calculated from reported data and are subject to rounding.

Non-Affiliation Disclosure

This report is produced independently by ThatCarHitMe.com (Injuria.ai). It is not affiliated with, endorsed by, or produced in partnership with any law enforcement agency, municipal government, state department of transportation, or the National Highway Traffic Safety Administration (NHTSA). Data is sourced from publicly available government open data portals.

Data License

The underlying crash data is provided under the municipality's Open Data Terms of Use and is made available to the public for unrestricted use. This analysis and report is © 2026 Injuria.ai and may be cited with attribution using the suggested citation below.

Corrections & Feedback

If you believe any data in this report is inaccurate or have questions about our methodology, please contact: data@injuria.ai. We are committed to accuracy and will issue corrections promptly.

Suggested Citation

ThatCarHitMe.com (Injuria.ai). "GEORGETOWN, MA Crash Intelligence Report: 2024." Published June 21, 2026. Reporting period: 2024-01-01 to 2024-12-31. Data source: Massachusetts Crash Data (MassDOT CDV), Arcgis_yearly Open Data. Available at: https://thatcarhitme.com/crash-data/massachusetts/georgetown/2024-annual-report

About the Publisher

ThatCarHitMe.com is a crash data intelligence platform developed by Injuria.ai, a legal technology company specializing in traffic safety analytics. We aggregate and analyze publicly available government crash data to produce structured intelligence reports for communities, researchers, journalists, and legal professionals. Our reports combine programmatic data retrieval from official open data portals with AI-assisted narrative analysis.

Questions about this report's data or methodology: data@injuria.ai

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Georgetown, MA Crash Report — 2024 | ThatCarHitMe.com