County-Level Nursing-Home RN Staffing Deserts
Across 1,362 U.S. counties with at least 3 reporting nursing homes, 550 (40.4%) staff registered nurses below the federal benchmark of 0.55 RN hours per resident-day. This study ranks the 50 lowest, built directly on payroll-reported CMS data — every county traceable to a signed snapshot.
What the 0.55 standard means
In April 2024 the Centers for Medicare & Medicaid Services (CMS) finalized the first federal minimum nurse-staffing standard for Medicare- and Medicaid-certified nursing homes (42 CFR §483.35). It set a floor of 0.55 registered-nurse hours per resident-day (RN-HPRD) and 3.48 total nurse-staffing hours per resident-day. That numeric minimum was later rescinded (see Policy context below), but the 0.55 figure remains the clearest published federal yardstick for registered-nurse adequacy — and this study uses it that way. RN-HPRD is the simplest way to compare staffing across facilities of very different sizes: it divides the registered-nurse hours worked by the number of residents present, so a 0.55 reading means roughly 33 registered-nurse minutes for each resident, each day.
That figure is not an abstraction. Registered nurses are the only nursing staff licensed to perform clinical assessment, manage medication regimens, recognize a deteriorating resident, and direct the licensed practical nurses and certified nurse aides who deliver most hands-on care. A large body of health-services research links higher registered-nurse staffing to fewer pressure ulcers, fewer avoidable hospitalizations, lower mortality, and fewer care deficiencies. When a county's nursing homes collectively report a third — or a fifth — of the federal RN floor, the gap is a structural access problem, not a rounding artifact.
This study measures county RN-HPRD the way CMS computes facility staffing: from payroll. The Payroll-Based Journal (PBJ) is a mandatory quarterly submission in which every certified nursing home reports daily, auditable staffing hours by job category, tied to payroll and census records. Because PBJ is payroll-derived rather than self-described, it is the most defensible nationwide staffing measure available — and it is published in full by CMS as a public-use file. The snapshot here covers calendar quarter 2025Q2 (April 1, 2025 – June 30, 2025): 1,322,867 facility-day records across 14,537 nursing homes.
Where the deserts cluster
Every U.S. county with at least 3 reporting nursing homes is shaded below by its pooled registered-nurse hours-per-resident-day: deeper red marks counties further beneath the 0.55 RN floor, slate marks counties at or above it, and grey marks counties with too few facilities to rank. The pattern is regional, not random — a contiguous band across the South Central and Deep South carries the most severe and most widespread shortfalls, with the five lowest-staffed counties labeled inline.
Five lowest-staffed counties: 1. Bienville, LA (0.156) · 2. St. Mary, LA (0.157) · 3. Iberia, LA (0.176) · 4. Lafayette, LA (0.177) · 5. Rogers, OK (0.192)
Hover or focus a county for its pooled RN-HPRD, facility count, and rank; the 50 lowest-staffed counties are keyboard-focusable and link to their table row. Connecticut reorganized its counties into nine Census planning regions (2022 vintage) that the current boundary file predates; all nine report RN-HPRD above the 0.55 benchmark, so Connecticut is shaded above-benchmark here and carried at full fidelity in the ranked table and the state-rollup map below.
State-level rollup
The same county findings, aggregated to state resolution: each state is shaded by the share of its qualifying counties that fall under the 0.55 RN floor. This view reads the regional clustering at a glance, where the county map reads the local detail.
The 50 lowest-staffed counties
Ranked ascending by total registered-nurse hours per resident-day (RN Director of Nursing + RN Administrative + Direct-Care RN), pooled across every facility-day in the quarter and weighted by resident census. “% of floor” expresses each county's RN-HPRD as a share of the 0.55 standard. The lowest-staffed county, Bienville, Louisiana, reports 0.156 RN-HPRD — 28% of the federal floor.
| # | County | State | RN-HPRD | % of floor | Direct-care RN | Facilities | Resident-days | Region |
|---|---|---|---|---|---|---|---|---|
| 1 | Bienville | LA | 0.156 | 28% | 0.101 | 3 | 25,853 | South |
| 2 | St. Mary | LA | 0.157 | 28% | 0.038 | 3 | 26,593 | South |
| 3 | Iberia | LA | 0.176 | 32% | 0.021 | 4 | 29,229 | South |
| 4 | Lafayette | LA | 0.177 | 32% | 0.040 | 10 | 86,150 | South |
| 5 | Rogers | OK | 0.192 | 35% | 0.099 | 5 | 31,463 | South |
| 6 | Kings | CA | 0.195 | 36% | 0.127 | 3 | 23,209 | West |
| 7 | Grady | OK | 0.197 | 36% | 0.098 | 4 | 20,767 | South |
| 8 | Pettis | MO | 0.199 | 36% | 0.142 | 5 | 47,443 | Midwest |
| 9 | Mcintosh | OK | 0.199 | 36% | 0.040 | 3 | 16,588 | South |
| 10 | Caddo | OK | 0.200 | 36% | 0.039 | 3 | 12,371 | South |
| 11 | Orange | TX | 0.202 | 37% | 0.127 | 3 | 25,345 | South |
| 12 | Imperial | CA | 0.207 | 38% | 0.128 | 3 | 19,479 | West |
| 13 | Lincoln | LA | 0.210 | 38% | 0.082 | 3 | 27,394 | South |
| 14 | Garvin | OK | 0.217 | 40% | 0.114 | 3 | 13,408 | South |
| 15 | San Augustine | TX | 0.221 | 40% | 0.078 | 3 | 12,641 | South |
| 16 | Acadia | LA | 0.223 | 41% | 0.111 | 5 | 45,700 | South |
| 17 | Wise | TX | 0.223 | 41% | 0.110 | 4 | 29,380 | South |
| 18 | Ouachita | LA | 0.228 | 42% | 0.083 | 9 | 72,725 | South |
| 19 | Mccurtain | OK | 0.229 | 42% | 0.129 | 3 | 16,034 | South |
| 20 | Washington | OK | 0.229 | 42% | 0.113 | 5 | 27,374 | South |
| 21 | Sequoyah | OK | 0.230 | 42% | 0.066 | 4 | 20,260 | South |
| 22 | Kerr | TX | 0.231 | 42% | 0.136 | 4 | 31,578 | South |
| 23 | Comanche | OK | 0.231 | 42% | 0.128 | 4 | 32,448 | South |
| 24 | Salem | NJ | 0.232 | 42% | 0.133 | 4 | 41,983 | Northeast |
| 25 | Vermilion | LA | 0.232 | 42% | 0.112 | 6 | 46,858 | South |
| 26 | Tangipahoa | LA | 0.234 | 43% | 0.139 | 6 | 56,230 | South |
| 27 | Morehouse | LA | 0.235 | 43% | 0.100 | 4 | 25,218 | South |
| 28 | Le Flore | OK | 0.236 | 43% | 0.093 | 6 | 28,301 | South |
| 29 | Crawford | MO | 0.237 | 43% | 0.157 | 3 | 12,764 | Midwest |
| 30 | Jefferson | TX | 0.240 | 44% | 0.126 | 13 | 89,681 | South |
| 31 | Evangeline | LA | 0.241 | 44% | 0.154 | 4 | 30,852 | South |
| 32 | E. Baton Rouge | LA | 0.243 | 44% | 0.119 | 25 | 216,008 | South |
| 33 | Orleans | LA | 0.243 | 44% | 0.124 | 11 | 106,495 | South |
| 34 | Calcasieu | LA | 0.245 | 45% | 0.143 | 10 | 79,725 | South |
| 35 | Bastrop | TX | 0.245 | 45% | 0.123 | 5 | 41,117 | South |
| 36 | Haralson | GA | 0.245 | 45% | 0.168 | 3 | 18,487 | South |
| 37 | Crawford | AR | 0.245 | 45% | 0.088 | 4 | 31,325 | South |
| 38 | Terrebonne | LA | 0.246 | 45% | 0.149 | 3 | 34,402 | South |
| 39 | Fayette | TX | 0.249 | 45% | 0.169 | 5 | 29,987 | South |
| 40 | Polk | GA | 0.249 | 45% | 0.134 | 3 | 19,885 | South |
| 41 | Franklin | LA | 0.249 | 45% | 0.058 | 4 | 27,352 | South |
| 42 | Lincoln | MO | 0.251 | 46% | 0.166 | 4 | 24,062 | Midwest |
| 43 | Johnson | MO | 0.252 | 46% | 0.157 | 5 | 23,943 | Midwest |
| 44 | Jasper | TX | 0.252 | 46% | 0.082 | 3 | 14,835 | South |
| 45 | Randolph | MO | 0.255 | 46% | 0.160 | 3 | 28,343 | Midwest |
| 46 | Spalding | GA | 0.255 | 46% | 0.150 | 3 | 28,804 | South |
| 47 | Chariton | MO | 0.256 | 47% | 0.145 | 3 | 17,315 | Midwest |
| 48 | Coryell | TX | 0.259 | 47% | 0.193 | 4 | 31,055 | South |
| 49 | Muskogee | OK | 0.260 | 47% | 0.150 | 10 | 57,415 | South |
| 50 | Union | LA | 0.262 | 48% | 0.193 | 3 | 22,791 | South |
All 1,362 qualifying counties are available in the JSON dataset and CSV download. Figures are CMS payroll-reported staffing; Fonteum does not rate, rank, or score any individual facility.
The Louisiana epicenter
One state dominates the lowest end of the ranking. Louisiana parishes occupy a striking share of the lowest fifty counties, and they hold the very bottom: Bienville Parish reports just 0.156 registered-nurse hours per resident-day, roughly 28% of the federal floor and the equivalent of fewer than ten registered-nurse minutes per resident per day. It is followed closely by a tight cluster of south-Louisiana parishes — the Acadiana belt around Lafayette, Iberia, and St. Mary, and the industrial corridor through Calcasieu and the Baton Rouge region. These are not isolated weak facilities; they are whole parishes where the pooled registered- nurse coverage sits near a fifth of the standard.
The Louisiana pattern is instructive because it combines the forces that produce a staffing desert. Louisiana pairs one of the lower Medicaid nursing-home reimbursement environments in the country with a heavily for-profit ownership base and a thin rural registered-nurse labor pool, especially outside the New Orleans and Baton Rouge metros. Where Medicaid covers most nursing-home resident-days and the reimbursement rate is tight, facilities lean on lower-cost licensed practical nurses and certified nurse aides and minimize the more expensive registered-nurse line. The pooled county number is what that strategy looks like when it is summed across every facility and every day in a quarter.
Oklahoma, east Texas, and rural Missouri form the next band. The recurrence of the same states across dozens of adjacent counties is the signature of a regional, structural shortfall rather than a handful of troubled homes — and it is exactly the pattern a facility-by-facility lookup is least equipped to reveal.
Regional clustering
Sorted by the share of qualifying counties below the federal floor, the Census regions separate sharply. The concentration in the South is the headline finding: it holds both the lowest-staffed individual counties and the highest regional desert share. The state leaderboard that follows shows where the desert counties physically sit.
| Region | Counties | Deserts | Share | RN-HPRD |
|---|---|---|---|---|
| South | 544 | 335 | 62% | 0.544 |
| Northeast | 176 | 56 | 32% | 0.660 |
| Midwest | 505 | 132 | 26% | 0.664 |
| West | 137 | 27 | 20% | 0.664 |
| State | Desert counties | of qualifying | RN-HPRD |
|---|---|---|---|
| Texas | 102 | 108 | 0.401 |
| Missouri | 52 | 59 | 0.404 |
| Oklahoma | 37 | 37 | 0.318 |
| Louisiana | 32 | 32 | 0.258 |
| North Carolina | 32 | 51 | 0.533 |
| Georgia | 31 | 42 | 0.451 |
| New York | 29 | 50 | 0.669 |
| Illinois | 28 | 60 | 0.674 |
The geographic story matters because nursing-home staffing is set by local labor markets, state Medicaid reimbursement, and regional ownership patterns — not by a single national dial. A registered nurse in a rural parish competes for the same scarce clinical labor as the local hospital, and in low-reimbursement states the nursing home usually loses that competition. When dozens of adjacent counties all sit below the floor, the result is a regional care desert: a resident cannot simply choose a better-staffed facility one town over, because the next town reports the same shortfall.
Rural vs. urban: a market-size view
The PBJ file carries no rural/urban classification, so this study proxies county market size by the number of reporting facilities — a coarse stand-in for whether a county is a small rural market or a large metropolitan one. Read it as a proxy, not a Census rural-urban-commuting-area join (see Limitations).
| County market size (facilities) | Counties | Below floor | Share | Pooled RN-HPRD |
|---|---|---|---|---|
| 3 facilities (smallest markets) | 371 | 173 | 47% | 0.584 |
| 4–5 facilities | 394 | 175 | 44% | 0.580 |
| 6–9 facilities | 284 | 99 | 35% | 0.626 |
| 10+ facilities (largest markets) | 313 | 103 | 33% | 0.634 |
The market-size view sharpens the access story. Smaller markets — counties with only a handful of nursing homes — tend to carry a higher share of below-floor counties, which is exactly what the regional-desert hypothesis predicts: thin rural labor markets and lower Medicaid reimbursement push registered-nurse coverage down, and there are few alternative facilities to absorb the gap. Larger metropolitan counties are not immune, but they post a higher pooled RN-HPRD on average and more internal variation, because a single well-staffed academic-affiliated facility can lift the county pool even when others lag.
How this differs from existing nursing-home tools
Excellent facility-level tools already exist. The Long Term Care Community Coalition (LTCCC) publishes quarterly PBJ staffing snapshots and per-facility tables, and NursingHome411 lets families look up a specific home and read its staffing, ownership, and citation history. Those are search interfaces: you arrive knowing a facility or a ZIP code, and they answer “how is this home doing?”
This study answers a different question — “where is the system failing, and how badly?” — and it answers it as a ranked, county-level analysis rather than a lookup. Three things make it distinct:
- Unit of analysis. The county, not the facility. By pooling every facility-day in a county and weighting by resident census, the study surfaces structural access deserts that a one-facility lookup cannot reveal — a county where every home is understaffed reads very differently from one weak facility among strong neighbors.
- Ranking against a statutory floor. Every county is expressed as a share of the 0.55 federal RN standard, producing a single national leaderboard rather than per-home report cards.
- Signed, reproducible provenance. The full ranked dataset ships as JSON and CSV, each row carrying a 14-field provenance record tying it to the CMS source, the snapshot quarter, the methodology version, and the chained integrity attestation. The aggregation SQL is published so any analyst can reproduce the table.
In short: LTCCC and NursingHome411 tell a family about a home; this study tells a journalist, regulator, or researcher about a region. The two are complementary — this analysis is the map that tells you which counties are worth a facility-level look.
Policy context: a benchmark that outlived the mandate
For most of the program's history, federal law required only that a nursing home provide “sufficient” nursing staff and a registered nurse for eight consecutive hours a day, seven days a week — a standard so elastic that staffing varied enormously from state to state. The 2024 CMS Minimum Staffing Rule changed that for the first time, attaching a hard, hours-based number to the obligation: 0.55 RN-HPRD and 3.48 total nurse-hours per resident-day, alongside a 24/7 on-site registered-nurse requirement.
That numeric minimum did not survive. The federal staffing mandate was rescinded on December 3, 2025, effective February 2, 2026, before its phase-in took hold — which means there is now no in-force federal floor on how few registered-nurse hours a nursing home may staff. With the mandate gone, per-facility and per-county transparency becomes the primary remaining mechanism for staffing accountability. That is precisely the gap this study fills.
This study takes no position on whether the mandate should return. It uses the 0.55 figure as what it now is — a published federal benchmark, a fixed yardstick — and measures, county by county, how far reported staffing sits beneath it. A parish at 28% of that benchmark is not a tuning problem; reaching it would require multiplying registered- nurse hours several times over, against the same rural labor and reimbursement constraints that produced the shortfall. Whether or not a federal floor ever returns, the distance documented here is the same.
Who this is for
Journalists can lead with a defensible county ranking and drill into the named parishes and counties at the bottom, then cross-reference the deficiency and ownership records that facility-level tools surface. Researchers and policy analysts can download the full 1,362-county dataset, join it to Medicaid reimbursement, ownership, or rural-urban classifications, and reproduce the roll-up from the published SQL. Regulators and ombudsman programs can use the regional view to target oversight where shortfalls are systemic rather than isolated. And families comparing options in a low-ranked county gain the context that the problem may be regional — a signal to widen the search radius or weigh the staffing question more heavily.
Methodology
Source. CMS Payroll-Based Journal (PBJ) Daily Nurse Staffing public-use file, calendar quarter 2025Q2. PBJ is a mandatory quarterly submission under §6106 of the Affordable Care Act; facilities report daily, payroll-tied staffing hours by job category along with daily resident census derived from the Minimum Data Set (MDS). The CMS file is U.S.-Government-Works (public domain). This snapshot comprises 1,322,867 facility-day records across 14,537 facilities in 52 states and territories.
Registered-nurse hours.Total RN hours sum three PBJ job codes: RN Director of Nursing (code 5), RN Administrative (code 6), and Direct-Care RN (code 7) — the same composition CMS uses for the reported RN staffing measure. The study also carries direct-care RN hours (code 7 only) separately, so readers can see how much of a county's registered-nurse coverage is bedside versus administrative.
Resident-days.The denominator is the sum of daily MDS census across the quarter. Hours-per-resident-day is therefore a census-weighted average: a facility's busy days count proportionally more than its quiet days, and large facilities influence the county pool in proportion to the residents they serve.
County roll-up.Each facility is mapped to its county via the PBJ state and county FIPS fields, joined to a state-FIPS table to form the 5-digit county code. County RN-HPRD = Σ RN hours ÷ Σ resident-days across all facilities in the county. This pooled construction is deliberately resistant to a single facility's reporting quirk.
Minimum-facility threshold. Counties with fewer than 3reporting facilities are excluded. Very small counties produce volatile ratios — one facility's payroll month can swing the whole county — so the threshold trades a small amount of coverage for materially more stable rankings. After the threshold, 1,362 counties qualify, covering 12,447 of 14,537 facilities.
Reproducibility. The exact aggregation is published as scripts/research/county-staffing-deserts.sql. The resulting snapshot is committed verbatim and served at the JSON and CSV endpoints below. Methodology version county-staffing-deserts/v1 is pinned; a future PBJ quarter will be published as a new dated snapshot rather than overwriting this one.
Limitations
- Single quarter. This snapshot covers 2025Q2only. Staffing varies seasonally and with local labor conditions; a county's rank can move across quarters.
- Self-reported payroll. PBJ is payroll-derived and auditable, but it is still submitted by facilities. CMS audits a sample; this study does not independently re-audit hours.
- Census denominator.RN-HPRD uses MDS census as the resident count. Days with suppressed or missing census are excluded from that facility's contribution, which can slightly shift a small county's pool.
- Urbanicity is a proxy. The rural/urban view uses facility count as a stand-in for market size, not a Census rural-urban-commuting-area (RUCA) classification. Treat the market-size table as directional.
- County boundaries. County names and FIPS follow the PBJ file; independent cities and parish/borough equivalents are counted as their own counties. Puerto Rico municipios are present in the source but rarely meet the facility threshold.
- Connecticut map geometry. CMS now reports Connecticut under its nine 2022 Census planning regions, which the current 1:10M boundary file predates. On the county map, Connecticut is therefore shaded at its legacy outline as above-benchmark — every CT planning region reports RN-HPRD above the 0.55 floor (none are deserts). All nine regions appear at full fidelity in the ranked dataset and the state-rollup map.
- No quality claim. Low RN-HPRD is a staffing-input measure, not an outcome judgment about any specific facility. Fonteum does not rate or rank individual homes.
Data & downloads
Every qualifying county, ranked, with full provenance:
Source: CMS Payroll-Based Journal (PBJ) Daily Nurse Staffing, snapshot 2025Q2. Accessed June 3, 2026. Public domain per 17 U.S.C. § 105; this derived study is published under CC-BY-4.0.
Related
- NPI lookup — search any U.S. provider by NPI or name and read the NPPES, PECOS, and OIG record behind it.
- Care Compare: Nursing Homes — quality, staffing, and ownership for every certified U.S. facility.
Cite this study
@techreport{fonteum_2025q2_staffing_deserts,
title = {County-Level Nursing-Home RN Staffing Deserts},
author = {{Fonteum Research Bureau}},
institution = {Fonteum},
year = {2026},
type = {Data study},
note = {Methodology version county-staffing-deserts/v1. Reviewed by Jennifer Montecillo, MD.},
url = {https://fonteum.com/research/nursing-home-staffing-deserts-by-county}
}Fonteum Research Bureau. (2026). County-Level Nursing-Home RN Staffing Deserts. Fonteum. Retrieved June 3, 2026, from https://fonteum.com/research/nursing-home-staffing-deserts-by-county
Fonteum Research Bureau. "County-Level Nursing-Home RN Staffing Deserts." Fonteum, June 3, 2026. https://fonteum.com/research/nursing-home-staffing-deserts-by-county.