Chronic health conditions are considered ambulatory care–sensitive conditions (ACSC) when the illness is controllable with effective and timely outpatient care that can potentially prevent the need for hospitalizations. Hospitalization rates for ACSC serve as an indicator of the access to and quality of primary care for chronic conditions. Standard methods to calculate hospitalization rates incorporate the total population in the denominator instead of the total population at risk for a hospitalization. By accounting for people with an ACSC, this study compares standard methods to a disease prevalence–adjusted method to highlight the importance of adjusting for ACSC prevalence when using ACSC hospitalizations in assessing primary care outpatient services.
We combined California Health Interview Survey and hospital discharge data to calculate standard (crude and age-adjusted) and disease prevalence-adjusted hospitalization rates for hypertension and congestive heart failure. To compare rate calculations, we ranked California counties by their hospitalization rate.
Counties had high prevalence and low numbers of hospitalizations for hypertension; their rankings for hospitalization rates for hypertension did not vary, even after accounting for prevalence. In contrast, counties had low prevalence and high numbers of hospitalizations for congestive heart failure; their rankings varied substantially for congestive heart failure after accounting for prevalence.
Because the number of people diagnosed with an ACSC is rising and costs to treat these conditions are increasing, our findings suggest that more accurate measures of ACSC hospitalization rates are needed. Incorporating disease prevalence will contribute to ACSC research by improving the validity of hospitalization rates as a measure for quality of primary care services.
Listen to an interview with Camillia Lui, winner of the inaugural Preventing Chronic Disease Student Paper Competition. (MP3 1.07Mb)
I’m Fran Kritz for This is quite an honor to get this award, so I’m very appreciative to the journal. The title of the article is “A Common Denominator: Calculating Hospitalization Rates for Ambulatory Care–Sensitive Conditions in California.” I had the opportunity to work with Steven Wallace at the UCLA Center for Health Policy Research on this — on this paper. It was actually a grant received from the California HealthCare Foundation to examine the burden of chronic diseases in California. So, 1 of the ways to examine the burden of chronic disease is to use preventable hospitalization rates. If an area has good access to quality primary care services, the idea is that then there are lower hospitalization rates. So, we’re using that as our key variable for this paper. And what — tell us the methodology that you used to study the target areas. So, we decided to use 2 ways of calculating the hospitalization rates, the traditional way of crude and age-adjusting versus a disease-prevalence method. And the traditional way [is you] usually use the total population in the county as the denominator to calculate the rate. But not everyone is at risk for a hospitalization, especially those who have been diagnosed with a chronic condition. So, we’re fortunate enough to merge in data from the California Health Interview Survey to this data to capture the disease prevalence. So, to capture those who have been diagnosed with a chronic condition, so we used that as the denominator for calculating the rates. And, for this paper, we actually compared the rates using 2 chronic conditions that are manageable with outpatient care, and that was hypertension and congestive heart failure. And what is the significance of your findings? How do they relate to community care? Well, it’s kind of interesting because when we looked at the hypertension rates, it doesn’t matter which method we used. There were very few differences when we compared it by county rankings, but when we were looking at the congestive heart failure, there were actually larger differences with the county rankings such that there are certain counties that just showed a higher burden, using the prevalence-adjusted rate, that wouldn’t have shown that when we looked at the traditional age-adjusted rate. So, it doesn’t mean that 1 way is better than the other, but it does highlight that there might be some underlying differences that traditional methods for calculating hospitalization rates — that they won’t capture. What was it like working with a mentor? It was great. Dr Wallace is definitely for the students, and he gave me the guidance that I needed, but also gave me the sort of freedom to pursue it. We originally did this project for the California HealthCare Foundation, but the next step was to publish it, and through this opportunity, the student contest, we were able to at least submit a manuscript, for it. And, what’s next for you? What will you be studying? So, 1 of the next steps is we are actually going to take these rates and see if they have different factors that are associated with it — associated with, like, access to care factors. The other thing that was really interesting about this project is that the Healthcare Foundation — California HealthCare Foundation, they took the data and were able to make it into this very user friendly, interactive website. So, folks from the county level to public health researchers, to policy makers, they can actually go to this website and click on this — the California county and see what the — what the data look like for chronic disease for their area. So, that was 1 thing that I really enjoyed with this, being able to take data, information about chronic disease and make it readily available and user friendly. What do you see you doing down the road with your career in public health in addition to the really fine research you’re doing right now? I’m definitely a research nerd. One of the things that drove me back to school is to gain the quantitative skills, but to be able to take that back to the community and especially work with community-based organizations with that. There’s just so much data out there, whether it’s community organizations collecting it for themselves or using data such as California Health Interview Survey data to better inform their own work, documents, problems, and strengths of their communities, and inform them for better programs and implementation and service delivery. Sounds exciting. Camillia Lui, winner of the inaugural Thank you, Fran. I’m Fran Kritz for
Chronic health conditions are the leading cause of death and disability in the United States and are the largest component of health care costs (
Common ways to report hospitalization rates include crude and age-adjusted rates (
In traditional rate calculations, we assume that the events such as hospitalizations (numerator) occur among the population at risk (denominator). When calculating hospitalization rates, the true at-risk population is limited to those who have an ACSC. By using the number of people who report being diagnosed with an ACSC in the denominator, we can calculate a disease prevalence–adjusted rate that should more accurately reflect potentially avoidable hospitalizations.
We assessed the value of incorporating disease prevalence into the denominator in hospitalization-rate calculations. Using California Health Interview Survey (CHIS) data and hospital discharge data, this study examines standard and disease prevalence-adjusted ACSC hospitalization rates for hypertension and congestive heart failure (CHF) among California adults. By comparing a disease prevalence–adjusted rate with standard-rate calculations, we hypothesized that prevalence–adjusted hospitalization rates would highlight areas with higher ACSC burden.
We combined population-based data from CHIS and hospitalization data from the California Office of Statewide Health Planning and Development's (OSHPD's) hospital patient discharge files. This study received institutional review board approvals from the University of California, Los Angeles (UCLA) Human Subjects Protection Committee, the California Health and Human Services Agency, and the California OSHPD.
Conducted every other year since 2001, CHIS is a random-digit–dialed telephone survey of California's noninstitutionalized population. On average, there are 45,000 completed CHIS interviews with adults aged 18 years or older per data collection year. CHIS data from 2003, 2005, and 2007 were pooled and weighted to adjust for geographic oversampling and to reflect California population characteristics. ACSC prevalence, population size, and demographic characteristics were obtained at the county level from CHIS data.
The OSHPD hospital patient discharge dataset comprises a record for each inpatient discharged from a licensed acute care hospital in California. We used patient discharge data from OSPHD of respondents aged 18 years or older from 2004 through 2006, which included more than 11 million records. From the OSPHD dataset, we used principal diagnosis, source or type of admission, discharge date, and patient-level characteristics. Because of small population sizes, 19 counties were grouped into 4 county clusters. Both Los Angeles and San Diego counties were subdivided into smaller subcounty areas. Data were managed and analyzed in Microsoft Excel 2007 and SAS version 9.2 (SAS Institute, Inc, Cary, North Carolina).
We chose 2 chronic conditions on the basis of AHRQ's PQIs: hypertension (PQI no. 7) and CHF (PQI no. 8). For disease prevalence, we used CHIS data of adults reporting ever being diagnosed with hypertension or CHF by a doctor. Estimates and variances of disease prevalence at the county level were pooled from CHIS 2003, 2005, and 2007. For areas with a small number of events, we imputed the disease prevalence estimate on the basis of similar county size characteristics (eg, population size, disease prevalence, hospitalizations). To identify ACSC hospitalizations, we used principal diagnosis as defined by the International Classification of Diseases, Ninth Revision, Clinical Modification (ICD-9-CM) (
We calculated crude, disease prevalence–adjusted, age-adjusted, and combined age-and prevalence-adjusted hospitalization rates for hypertension and CHF. Crude rates were calculated with number of hospitalizations in county as the numerator and total population in county as the denominator (
All rates were aggregated at the California county level and subcounty level for Los Angeles and San Diego counties. Hospitalization rates were expressed per 100,000 people in the population (for the crude and age-adjusted rates) or per 100,000 people reporting the ACSC in the population (for the disease prevalence–adjusted and age- and disease prevalence–adjusted rates). To compare across counties, age-adjusted and age- and disease prevalence-adjusted rates were standardized (ie, process of comparing counties) by using 2000 US Census population data (
In this study, we compared hospitalization rates that do and do not incorporate disease prevalence. We first present disease prevalence, average number of hospitalizations per year, and age-specific rates. Next, age-adjusted and combined age- and disease prevalence–adjusted hospitalization rates are discussed. Results are presented separately for each ACSC.
The annual prevalence of hypertension was high (24.8%) (
Age-specific and age- and prevalence-specific hospitalization rates for hypertension among California adults. Source: California Health Interview Survey and OSHPD Hospital Patient Discharge Data. Abbreviation: Office of Statewide Health Planning and Development.
| 18-44 | 6.5 | 62.2 |
| 45-64 | 30.4 | 90.9 |
| 65-74 | 57.7 | 101.3 |
| ≥75 | 94.5 | 154.4 |
Age-specific and age- and prevalence-specific hospitalization rates for CHF among California adults. Source: California Health Interview Survey and OSHPD Hospital Patient Discharge Data. Abbreviation: OSHPD, Office of Statewide Health Planning and Development.
| 18-64 | 81.6 | 9,338.3 |
|---|---|---|
| 65-74 | 672.5 | 12,340.5 |
| ≥75 | 1,774.7 | 22,322.3 |
There was a low hospitalization rate of hypertension at 24 per 100,000 people (
The annual prevalence of CHF (1.6%) was much lower than the hypertension prevalence. In contrast, the average number of hospitalizations was higher (65,389 per year) (
The overall CHF hospitalization rate was 249 per 100,000 (
CHF rate comparisons show that the group rankings of 31 counties changed, and among them, 15 counties changed by 2 or more quintiles (
This study examined the effect of incorporating disease prevalence into the denominator when calculating hospitalization rates for hypertension and CHF. CHF has a low prevalence in the overall population and a high hospitalization rate, and hypertension has a high prevalence in the overall population and a low hospitalization rate. After incorporating disease prevalence into the rate calculation beyond age adjusting, 31 counties were shifted to a new CHF group ranking, compared with only 14 counties that were shifted to a new hypertension group ranking.
Higher ACSC hospitalization rates indicate poor quality, uncoordinated care, or insufficient access to health care (
Little change occurred when accounting for hypertension prevalence in the population at risk for a hospitalization. Counties with high hospitalization rates, regardless of accounting for disease prevalence, continue to be critical areas for improving outpatient care for hypertension. These findings on hypertension refute our hypothesis that adjusting for disease prevalence would highlight areas of higher disease burden. Although overall hospitalization rates are low for hypertension, a 2010 California report showed a dramatic increase in hypertension hospitalization rates from 1999 through 2008; the largest increase occurred from 2006 through 2008 (outside this study period) (
Hospitalizations for CHF may be more preventable. After adjusting for disease prevalence, more than half of California counties changed group rankings. Furthermore, counties that reported lower group rankings by standard calculations switched to higher group rankings when adjusting for CHF prevalence. Areas such as SPA 5-West Area in Los Angeles County, Santa Barbara County, and Santa Clara County all shifted from low to high hospitalization rates. Although these are more affluent areas with high incomes and low poverty levels, the low rate of hospitalizations and high rate when adjusted for CHF prevalence may point to a higher tendency to hospitalize people with CHF. Factors such as low disease prevalence and large number of hospital beds may also fuel these hospitalization rates and thus create a hospital supply-induced care rather than a need-induced care. Although we cannot differentiate between supply-induced and need-induced care, these rate calculations are based on a patient's zip code of residence and not on referrals into an area with better hospitals. Further research is needed to explain the higher prevalence-adjusted hospitalization rates in these areas to help reduce preventable CHF hospitalizations.
This study has several limitations. First, disease prevalence is measured from a population-based survey, whereas hospitalizations are based on an administrative census count. The underdiagnosis of chronic conditions is well established from population-based surveys (
Second, hospitalization rates have been shown to vary widely by sex and race/ethnicity (
The results from this study show that disease prevalence should be incorporated into ACSC research. Previous studies have included disease prevalence as a control variable in statistical analysis rather than incorporating disease prevalence into the hospitalization rate (
We thank Hongjian Yu and Leanne Streja at the UCLA Center for Health Policy Research for their statistical support and Dylan Roby at the UCLA Center for Health Policy Research for his project support. The research for this analysis was supported in part by the California HealthCare Foundation (08-1054). Ms Lui was supported in part by NIH 5T32DA007272. Dr Wallace was supported in part by NIA P30AG021684.
The findings and conclusions in this report are those of the authors and do not necessarily represent the official position of the Centers for Disease Control and Prevention.
| 428, 402.01, 402.11, 402.91, 518.4 | Adults who reported ever having been diagnosed with congestive heart failure by a doctor. | |
| 401.0, 401.9, 402.00, 402.1, 402.9 | Adults who reported ever having been diagnosed with high blood pressure or hypertension by a doctor. |
Abbreviations: OSHPD, Office of Statewide Health Planning and Development; CHIS, California Health Interview Survey; ICD-9-CM,
California hospitals include general acute care hospitals, acute psychiatric hospitals, chemical dependency recovery hospitals, and psychiatric health facilities. Excludes transfer from a hospital (different facility), a skilled nursing facility or intermediate care facility, or another health care facility; and MDC 14 (pregnancy). Only 1 hospital record was used for patients who had multiple hospital admissions for the same principle diagnosis per year.
| Total # Hospitalizations in County |
| ____________________________________________ |
| Total # People in County |
| Numerator: OSHPD data 2004-2006 |
| Denominator: CHIS data, 2005 population estimates |
| Σ[Age-Specific Rates (Age Group 1) X (Standard Population (Age Group 1)] |
| _____________________________________________________________ |
| Total # People in Standard Population |
| Age-Specific Rates = |
| [Total # Hospitalizations in County (Age Group 1)] |
| ____________________________________________ |
| [Total # People inCounty (Age Group 1)] |
| Age- and Prevalence-Specific Rate Numerator: OSHPD data 2004-2006 |
| Age- and Prevalence-Specific Rate Denominator: CHIS data (2003, 2005, 2007) disease prevalence estimates |
| Total # Hospitalizations in County |
| ____________________________________________ |
| Total # People Reporting ACS Condition in County |
| Numerator: OSHPD data, 2004-2006 |
| Denominator: CHIS pooled data (2003, 2005, 2007) disease prevalence estimates |
| Σ[Age- and Prevalence-Specific Rates (Age Group 1) X (Standard Population (Age Group 1)] |
| _________________________________________________________________ |
| Total # People in Standard Population |
| Age- and Prevalence-Specific Rates = |
| Total # Hospitalizations in County (Age Group 1) |
| _________________________________________________ |
| [Total # People Reporting ACS Condition in County(Age Group 1)] |
| Standard Population: US Census 2000 population |
| Age- and Prevalence-Specific Rate Numerator: OSHPD Data 2004-2006 |
| Age- and Prevalence-Specific Rate Denominator: CHIS Data (2003, 2005, 2007) Disease Prevalence Estimates |
Abbreviations: OSHPD, Office of Statewide Health Planning and Development; CHIS, California Health Interview Survey; ACS, ambulatory care sensitive.
ACSC Prevalence and Hospitalizations, California Adults Aged 18 Years or Older
| Congestive Heart Failure, N (95% CI) | Hypertension, N (95% CI) | |
|---|---|---|
| 389,839 (375,400-404,278) | 6,527,573 (6,464,510-6,590,636) | |
| 1.6% | 24.8% | |
| 18-44 | 197,000 (178,494-215,506) | 1,511,000 (1,456,354-1,565,646) |
| 45-64 | 2,730,000 (2,676,325-2,783,675) | |
| 65-74 | 107,000 (97,418-116,582) | 1,123,000 (1,089,103-1,156,896) |
| ≥75 | 151,000 (140,096-161,904) | 1,164,000 (1,130,777-1,197,223) |
| 65,389 | 6,355 | |
| 18-44 | 18,379 | 940 |
| 45-64 | 2,480 | |
| 65-74 | 13,256 | 1,138 |
| ≥75 | 33,755 | 1,797 |
| 248.8 (248.75-248.77) | 24.1 (24.17-24.18) | |
| 16,773.3 (16,771.33-16,775.34) | 97.4 (97.35-97.36) | |
| 270.2 (266.0-274.4) | 25.1 (24.4-25.8) | |
| 10,633.0 (9,875.7-11,390.4) | 81.5 (78.6-84.3) | |
Abbreviations: ACSC, ambulatory care–sensitive conditions; OSHPD, Office of Statewide Health Planning and Development; CI, confidence interval.
Data were pooled from the California Health Interview Survey for 2003, 2005, and 2007 and averaged from OSHPD discharge files for 2004, 2005, and 2006.
Age groups 18-44 y and 45-64 y are combined for this rate because of the small prevalence of congestive heart failure in the population.
Rate per 100,000 people in the population.
Rate per 100,000 people reporting ACSC in the population.
Age-Adjusted and Age- and Prevalence-Adjusted Hospitalization Rates for Hypertension, California Adults 18 Years or Older
| Hypertension | ||||
|---|---|---|---|---|
| Age-Adjusted Rate | Age- and Prevalence | |||
| Rate (95% CI) | Group | Rate (95% CI) | Group | |
| 25.1 (24.4-25.8) | NA | 81.5 (78.6-84.3) | NA | |
| Alameda | 21.2 (18.3-24.2) | 4 | 73.2 (59.2-87.2) | 4 |
| Butte | 25.0 (17.6-32.5) | 4 | 76.0 (45.5-106.6) | 4 |
| Contra Costa | 15.3 (12.3-18.2) | 2 | 45.1 (34.2-56.1) | 2 |
| Del Norte, Siskiyou, Lassen, Trinity, Modoc, Plumas, Sierra | 10.0 (4.9-15.2) | 1 | 34.5 | 1 |
| El Dorado | 19.9 (12.1-27.6) | 3 | 82.6 | 4 |
| Fresno | 17.9 (14.1-21.7) | 3 | 58.0 (43.1-72.8) | 3 |
| Humboldt | 8.6 | 1 | 39.3 | 1 |
| Imperial | 28.1 (17.6-38.6) | 4 | 86.0 (46.4-125.7) | 4 |
| Kern | 25.0 (20.1-30.0) | 4 | 70.8 (53.7-87.9) | 4 |
| Kings | 33.0 (19.0-47.0) | 5 | 90.8 (47.0-134.6) | 4 |
| Lake | 10.7 (3.4-18.0) | 1 | 35.0 | 1 |
| Los Angeles SPA 1 – Antelope Valley | 43.0 (33.1-52.9) | 5 | 139.8 (100.3-179.3) | 5 |
| Los Angeles SPA 2 – San Fernando | 32.4 (29.1-35.7) | 5 | 100.6 (87.1-114.1) | 5 |
| Los Angeles SPA 3 – San Gabriel Valley | 29.9 (26.6-33.2) | 4 | 94.3 (79.5-109.0) | 5 |
| Los Angeles SPA 4 – Metro | 71.8 (64.1-79.4) | 5 | 219.9 (189.3-250.4) | 5 |
| Los Angeles SPA 5 – West Area | 13.5 (10.4-16.7) | 2 | 45.7 (30.5-60.9) | 2 |
| Los Angeles SPA 6 – South | 75.8 (66.0-85.6) | 5 | 201.6 (169.0-234.1) | 5 |
| Los Angeles SPA 7 – East Area | 35.3 (30.7-39.9) | 5 | 111.9 | 5 |
| Los Angeles SPA 8 – South Bay | 30.9 (27.3-34.5) | 5 | 98.5 | 5 |
| Madera | 15.3 (7.4-23.2) | 2 | 42.3 | 1 |
| Marin | 11.1 (6.5-15.7) | 1 | 48.5 (13.6-83.4) | 2 |
| Mendocino | 6.4 | 1 | 18.7 (0.0-42.4) | 1 |
| Merced | 18.5 (11.2-25.8) | 3 | 58.0 | 3 |
| Monterey | 20.5 (15.1-26.0) | 4 | 77.6 | 4 |
| Napa | 13.1 | 2 | 43.5 (10.2-76.8) | 2 |
| Nevada | 17.4 | 3 | 78.2 | 4 |
| Orange | 25.2 (22.7-27.7) | 4 | 85.6 (73.3-97.8) | 4 |
| Placer | 10.9 (6.7-15.1) | 1 | 37.8 (17.6-58.1) | 1 |
| Riverside | 27.3 (24.3-30.3) | 4 | 88.2 | 4 |
| Sacramento | 16.7 (14.0-19.4) | 3 | 62.7 (47.1-78.3) | 3 |
| San Benito | 35.4 | 5 | 95.4 (27.4-163.4) | 5 |
| San Bernardino | 40.1 (35.8-44.3) | 5 | 117.4 (102.3-132.5) | 5 |
| San Diego Region 1--North Coastal | 13.4 (9.5-17.3) | 2 | 40.2 (25.7-54.7) | 1 |
| San Diego Region 2--North Central | 14.7 (10.9-18.6) | 2 | 49.2 (32.8-65.6) | 2 |
| San Diego Region 3--Central | 34.0 (26.1-41.9) | 5 | 98.2 (70.2-126.3) | 5 |
| San Diego Region 4--South | 20.0 (14.2-25.7) | 4 | 65.0 (41.0-89.1) | 3 |
| San Diego Region 5--East | 14.8 (10.6-19.0) | 2 | 50.5 | 2 |
| San Diego Region 6--North Inland | 8.3 (5.2-11.4) | 1 | 28.4 (15.5-41.3) | 1 |
| San Francisco | 16.9 (13.6-20.2) | 3 | 63.8 (46.6-81.0) | 3 |
| San Joaquin | 34.7 (28.5-41.0) | 5 | 93.4 (73.9-112.9) | 5 |
| San Luis Obispo | 5.7 (2.5-8.9) | 1 | 28.2 (3.0-53.3) | 1 |
| San Mateo | 15.5 (11.9-19.1) | 2 | 43.2 (29.9-56.5) | 2 |
| Santa Barbara | 11.7 (7.8-15.7) | 1 | 43.3 (23.2-63.5) | 2 |
| Santa Clara | 14.2 (12.0-16.5) | 2 | 49.9 (39.5-60.2) | 2 |
| Santa Cruz | 16.0 (9.8-22.2) | 2 | 56.5 (27.5-85.5) | 3 |
| Shasta | 17.6 (10.8-24.3) | 3 | 56.6 (28.5-84.7) | 3 |
| Solano | 17.3 (12.2-22.3) | 3 | 51.5 | 2 |
| Sonoma | 7.8 (4.9-10.7) | 1 | 30.1 (13.6-46.6) | 1 |
| Stanislaus | 19.6 (14.5-24.7) | 3 | 56.4 | 3 |
| Sutter, Yuba | 24.4 (14.9-33.9) | 4 | 68.9 (36.4-101.5) | 4 |
| Tehama, Glenn, Colusa | 17.1 (8.2-26.0) | 3 | 57.9 | 3 |
| Tulare | 17.5 (12.1-22.9) | 3 | 51.5 (33.1-70.0) | 2 |
| Tuolumne, Calaveras, Amador, Inyo, Mariposa, Mono, Alpine | 14.3 (8.3-20.3) | 2 | 55.7 (20.8-90.7) | 3 |
| Ventura | 20.4 (16.4-24.4) | 4 | 65.9 (49.0-82.8) | 3 |
| Yolo | 9.5 (3.9-15.1) | 1 | 38.5 (12.9-64.2) | 1 |
Abbreviations: CHIS, California Health Interview Survey; OSHPD, Office of Statewide Health Planning and Development; CI, confidence interval; NA, not applicable.
Rates are per 100,000 people; Group 1 = lowest rate, Group 5 = highest rate.
Data were pooled from the California Health Interview Survey for 2003, 2005, and 2007 and averaged from OSHPD discharge files for 2004, 2005, and 2006.
Rates are unstable estimates with a coefficient of variance of more than 30%.
Age-Adjusted and Age- and Prevalence-Adjusted Hospitalization Rates for Congestive Heart Failure, California Adults Aged 18 Years or Older
| Congestive Heart Failure | ||||
|---|---|---|---|---|
| Age-Adjusted Rate | Age- and Disease Prevalence-Adjusted Rate | |||
| Rate (95% CI) | Group | Rate (95% CI) | Group | |
| 270.2 (266.0-274.4) | NA | 10,633.0 (9,875.7-11,390.4) | NA | |
| Alameda | 302.2 (279.5-324.9) | 4 | 11,322.5 (7,690.6-14,954.4) | 4 |
| Butte | 271.6 (238.9-304.2) | 4 | 9,497.9 (4,102.5-14,893.3) | 3 |
| Contra Costa | 236.6 (215.6-257.6) | 3 | 11,103.2 (6,375.9-15,830.5) | 3 |
| Del Norte, Siskiyou, Lassen, Trinity, Modoc, Plumas, Sierra | 174.4 (149.4-199.5) | 1 | 6,524.5 | 1 |
| El Dorado | 203.5 (168.7-238.3) | 2 | 8,124.1 (4,445.2-11,802.9) | 2 |
| Fresno | 325.4 (286.3-364.5) | 5 | 24,644.1 | 5 |
| Humboldt | 224.7 (184.8-264.6) | 2 | 8,367.9 (4,707.3-12,028.4) | 2 |
| Imperial | 315.6 (264.7-366.5) | 4 | 11,415.4 (5,413.9-17,417.0) | 4 |
| Kern | 316.0 (277.4-354.6) | 4 | 8,233.9 | 2 |
| Kings | 305.1 (247.4-362.9) | 4 | 13,014.2 (7,297.9-18,730.5) | 4 |
| Lake | 188.9 (153.9-223.9) | 1 | 7,836.9 (3,340.8-12,333.0) | 1 |
| Los Angeles SPA 1 – Antelope Valley | 399.8 (346.4-453.1) | 5 | 11,294.3 (5,223.8-17,364.8) | 3 |
| Los Angeles SPA 2 – San Fernando | 280.1 (259.0-301.3) | 4 | 11,548.7 (7,947.7-15,149.8) | 4 |
| Los Angeles SPA 3 – San Gabriel Valley | 285.9 (266.3-305.5) | 4 | 12,520.9 (8,780.9-16,260.8) | 4 |
| Los Angeles SPA 4 – Metro | 392.5 (356.9-428.1) | 5 | 15,643.3 (10,340.2-20,946.4) | 5 |
| Los Angeles SPA 5 – West Area | 159.3 (141.8-176.7) | 1 | 17,293.6 | 5 |
| Los Angeles SPA 6 – South | 539.1 (483.7-594.5) | 5 | 17,756.4 (8,623.5-26,889.3) | 5 |
| Los Angeles SPA 7 – East Area | 290.8 (265.0-316.7) | 4 | 13,957.8 (7,276.6-20,639.0) | 4 |
| Los Angeles SPA 8 – South Bay | 259.0 (240.3-277.8) | 3 | 10,761.9 (6,133.3-15,390.5) | 3 |
| Madera | 260.7 (219.0-302.5) | 3 | 7,813.2 (4,693.9-10,932.5) | 1 |
| Marin | 181.6 (156.2-207.1) | 1 | 7,872.5 (4,773.2-10,971.8) | 1 |
| Mendocino | 221.2 (177.1-265.3) | 2 | 9,182.2 (4,078.7-14,285.7) | 2 |
| Merced | 326.9 (279.2-374.7) | 5 | 12,081.6 (6,226.1-17,937.1) | 4 |
| Monterey | 229.6 (198.3-260.9) | 3 | 6,198.8 (4,213.8-8,183.8) | 1 |
| Napa | 216.7 (181.5-252.0) | 2 | 7,245.5 (3,891.1-10,599.9) | 1 |
| Nevada | 159.2 (130.1-188.3) | 1 | 6,615.4 | 1 |
| Orange | 249.2 (232.6-265.9) | 3 | 10,249.1 (7,488.3-13,009.9) | 3 |
| Placer | 196.3 (169.9-222.7) | 1 | 10,179.4 | 3 |
| Riverside | 258.3 (242.4-274.3) | 3 | 7,878.7 (5,762.3-9,995.2) | 2 |
| Sacramento | 276.6 (256.3-296.9) | 4 | 9,406.0 (6,726.6-12,085.4) | 3 |
| San Benito | 252.3 (175.2-329.3) | 3 | 16,730.9 | 5 |
| San Bernardino | 344.4 (318.2-370.5) | 5 | 12,775.2 (9,302.0-16,248.3) | 4 |
| San Diego Region 1 – North Coastal | 191.8 (166.8-216.7) | 1 | 9,031.6 (3,106.7-14,956.5) | 2 |
| San Diego Region 2 — North Central | 189.2 (161.1-217.3) | 1 | 10,827.0 (4,899.0-16,754.9) | 3 |
| San Diego Region 3 — Central | 419.9 (347.5-492.3) | 5 | 14,329.7 (8,129.2-20,530.1) | 4 |
| San Diego Region 4 — South | 357.0 (295.4-418.5) | 5 | 12,834.5 (6,621.3-19,047.6) | 4 |
| San Diego Region 5 — East | 198.7 (171.3-226.1) | 2 | 3,742.7 (2,623.8-4,861.6) | 1 |
| San Diego Region 6 — North Inland | 186.5 (159.7-213.2) | 1 | 7,352.9 | 1 |
| San Francisco | 233.1 (207.2-258.9) | 3 | 21,102.1 | 5 |
| San Joaquin | 366.2 (323.2-409.2) | 5 | 25,314.9 (14,549.8-36,080.1) | 5 |
| San Luis Obispo | 167.2 (142.5-191.9) | 1 | 8,056.2 (3,734.7-12,377.6) | 2 |
| San Mateo | 203.9 (178.7-229.1) | 2 | 12,556.0 | 4 |
| Santa Barbara | 200.3 (172.8-227.8) | 2 | 16,261.1 | 5 |
| Santa Clara | 208.3 (190.1-226.5) | 2 | 16,988.8 (10,321.0-23,656.6) | 5 |
| Santa Cruz | 270.5 (226.6-314.4) | 3 | 30,677.6 | 5 |
| Shasta | 240.7 (210.3-271.1) | 3 | 11,044.1 (5,026.7-17,061.5) | 3 |
| Solano | 298.0 (257.8-338.3) | 4 | 8,132.8 (6,096.5-10,169.0) | 2 |
| Sonoma | 197.3 (171.8-222.9) | 1 | 8,153.6 (4,636.3-11,670.8) | 2 |
| Stanislaus | 337.0 (295.6-378.3) | 5 | 9,800.9 (5,678.4-13,923.4) | 3 |
| Sutter, Yuba | 318.9 (274.6-363.2) | 5 | 16,974.0 (9,275.1-24,673.0) | 5 |
| Tehama, Glenn, Colusa | 258.4 (215.3-301.5) | 3 | 8,172.2 (3,872.2-12,472.2) | 2 |
| Tulare | 313.9 (273.6-354.2) | 4 | 10,150.5 (5,832.6-14,468.4) | 3 |
| Tuolumne, Calaveras, Amador, Inyo, Mariposa, Mono, Alpine | 209.2 (180.4-237.9) | 2 | 5,949.4 (2,827.0-9,071.7) | 1 |
| Ventura | 222.9 (194.3-251.6) | 2 | 7,906.9 | 2 |
| Yolo | 221.7 (182.5-260.9) | 2 | 6,356.6 (3,290.6-9,422.6) | 1 |
Abbreviations: CHIS; California Health Interview Survey; OSHPD, Office of Statewide Health Planning and Development; CI, confidence interval.
Rates are per 100,000 individuals; Group 1 = lowest rate, Group 5 = highest rate.
Data were pooled from the California Health Interview Survey for 2003, 2005, and 2007 and averaged from OSHPD discharge files for 2004, 2005, and 2006.
Rates are unstable estimates with a coefficient of variance of more than 30%.