ZIP 62266 Property Distress & Foreclosure Data
ZIP code 62266 in Clinton County, Illinois carries a composite property-distress score of 22/100 — a low reading on DLRadar's deterministic public-record index. Structural risk reads 50/100 against active distress of 2/100. Environmental exposure also runs high (climate & FEMA risk (68/100), flood (NFIP) exposure (60/100)). What sets it apart are the readings on construction/permit lag (70/100), structural risk (50/100), institutional ownership (14/100). On the quiet end sit institutional ownership (14/100) and mortgage stress (6/100).
The peak-phase market in 62266 posted values that rose 4.0% over the year, at 32/100 phase confidence. Near a top, distress surfaces unevenly, so parcel screening beats headline strength.
Population is roughly 29. 100% of housing is owner-occupied. There are about 60 housing units across 62266. The demographic-stress sub-score lands at 51/100. The poverty rate is 41.4% — high, a tax-stress and distress correlate. The typical home is worth about $113,900. Vacancy runs 74.3%, above the national norm and a classic distress-and-opportunity signal. Around 0% of adults hold a bachelor's degree or higher.
On the whole, 62266 leans distressed, with opportunity clustered in specific stressed parcels. Every signal above traces to a verifiable public dataset, refreshed continuously and scored the same way in every ZIP nationwide.
Distress signal breakdown — ZIP 62266
Tax delinquency, institutional ownership, insurance pressure, NFIP/flood, construction lag, price dislocation and auction velocity — plus the 0 individual distressed properties (owner, address, APN, per-property score and exit read) are in the full DLRadar report.
Nearby ZIPs in Clinton County
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Deterministic. Every signal traces to a public dataset · methodology