Literature DB >> 28193194

The Objective Physical Activity and Cardiovascular Disease Health in Older Women (OPACH) Study.

Andrea Z LaCroix1, Eileen Rillamas-Sun2, David Buchner3, Kelly R Evenson4, Chongzhi Di2, I-Min Lee5, Steve Marshall4, Michael J LaMonte6, Julie Hunt2, Lesley Fels Tinker2, Marcia Stefanick7, Cora E Lewis8, John Bellettiere9, Amy H Herring4.   

Abstract

BACKGROUND: Limited evidence exists to inform physical activity (PA) and sedentary behavior guidelines for older people, especially women. Rigorous evidence on the amounts, intensities, and movement patterns associated with better health in later life is needed. METHODS/
DESIGN: The Objective PA and Cardiovascular Health (OPACH) Study is an ancillary study to the Women's Health Initiative (WHI) Program that examines associations of accelerometer-assessed PA and sedentary behavior with cardiovascular and fall events. Between 2012 and 2014, 7048 women aged 63-99 were provided with an ActiGraph GT3X+ (Pensacola, Florida) triaxial accelerometer, a sleep log, and an OPACH PA Questionnaire; 6489 have accelerometer data. Most women were in their 70s (40%) or 80s (46%), while approximately 10% were in their 60s and 4% were age 90 years or older. Non-Hispanic Black or Hispanic/Latina women comprise half of the cohort. Follow-up includes 1-year of falls surveillance with monthly calendars and telephone interviews of fallers, and annual follow-up for outcomes with adjudication of incident cardiovascular disease (CVD) events through 2020. Over 63,600 months of calendar pages were returned by 5,776 women, who reported 5,980 falls. Telephone interviews were completed for 1,492 women to ascertain the circumstances, injuries and medical care associated with falling. The dataset contains extensive information on phenotypes related to healthy aging, including inflammatory and CVD biomarkers, breast and colon cancer, hip and other fractures, diabetes, and physical disability. DISCUSSION: This paper describes the study design, methods, and baseline data for a diverse cohort of postmenopausal women who wore accelerometers under free-living conditions as part of the OPACH Study. By using accelerometers to collect more precise and complete data on PA and sedentary behavior in a large cohort of older women, this study will contribute crucial new evidence about how much, how vigorous, and what patterns of PA are necessary to maintain optimal cardiovascular health and to avoid falls in later life. CLINICAL TRIALS REGISTRATION: ClinicalTrials.gov identifier NCT00000611 . Registered 27 October 1999.

Entities:  

Keywords:  Accelerometer; Cardiovascular disease; Falls; Mortality; Older women; Physical activity; Postmenopausal; Sedentary behavior; Sleep

Mesh:

Year:  2017        PMID: 28193194      PMCID: PMC5307783          DOI: 10.1186/s12889-017-4065-6

Source DB:  PubMed          Journal:  BMC Public Health        ISSN: 1471-2458            Impact factor:   3.295


Background

Due to their longevity advantage, women outnumber men in later life [1]. By the year 2060, the number of women ages 65 years and older in the United States (US) is estimated to be 52.7 million [2]. Despite their greater longevity, women have more morbidity and disability than men [3], resulting in higher frequency of outpatient visits and hospitalizations, use of long-term care services, and health care expenditures [4-6]. Regular physical activity (PA) provides remarkable health benefits for older adults, including reducing the risk of mortality, developing many chronic diseases, functional limitations, and fall-related injuries [7]. The 2008 PA Guidelines for Americans recommends that adults of all ages get a minimum of 150 min per week of moderate-intensity aerobic activity [7], however, accelerometer-measured PA data estimated that only 2% of older Americans met this guideline [8] and they sat up to 11 h per day [9-11]. Women, especially older women, were underrepresented in the evidence reviewed to derive these guidelines. This paper describes the study design, methods, and baseline data for a diverse cohort of postmenopausal women in the “Objective PA and Cardiovascular Health in Older Women” (OPACH) Study [R01 HL105065; PI: A LaCroix]. This study will contribute crucial new evidence about how much, how vigorous, and what patterns of PA are necessary to maintain optimal cardiovascular health in later life and whether PA levels are associated with incident falls.

Methods

Study population

The Women’s Health Initiative, Extension Studies and Long Life Study

The OPACH Study is an ancillary study to the WHI study, a major National Institutes of Health (NIH) research program that began in the early 1990s. Postmenopausal women ages 50 to 79 years were enrolled in the WHI Clinical Trials or the Observational Study from 40 clinical sites throughout the US from 1993 to 1998. Details about WHI have been extensively described [12, 13]. Protocols were approved by institutional review boards at participating institutions and all women gave written informed consent. WHI participants continue to be followed annually for disease events, changes in functional status, and death through the main program that ended in 2005, and three Extension Studies (2005–2010; 2010–2015; 2015–2020). Enrollment in the Extension Studies required that eligible women (alive and willing to be contacted) provide informed consent for continued follow-up in WHI. In the first Extension, 76.9% of 150,075 eligible women consented to further follow-up. In the second Extension, 86.8% of 107,706 eligible women consented to further follow-up without a defined end date. The WHI Long Life Study was conducted during the second WHI Extension Study among a subcohort of 7,875 WHI participants from March 2012 to May 2013 from all 40 original US clinical centers in their homes to collect new data to support research on factors associated with healthy aging and changing levels of biomarkers of CVD risk. Data collection included a brief clinical assessment (height, weight, waist circumference, blood pressure, and pulse), assessment of functional status (Short Physical Performance Battery (SPPB), [14, 15] and grip strength), and phlebotomy. A total of 7,048 WHI women who consented to participate in both the Long Life Study and the OPACH study were provided with an ActiGraph GT3X+ (Pensacola, Florida) triaxial accelerometer, a sleep log, and an OPACH PA Questionnaire (Additional file 1) between March 2012 and April 2014 either during the home visit or via express mail afterwards.

Cardiovascular disease outcomes

The primary outcomes for the OPACH Study are total cardiovascular disease (CVD) events and total mortality. WHI Extension Study participants are mailed forms annually to ascertain updates to their medical history. Medical records are obtained for reported outcomes and adjudicated by trained study physicians. Definitions of CVD outcomes are described in detail elsewhere [16] and summarized in Table 1. Deaths are ascertained when a family member informs the WHI staff, and through National Death Index searches and obituary notices. Participants are followed until they die, are lost-to-follow-up, or request no further contact. Vital status was known for 98% of women as of the end of 2014. Causes of death are determined based on available medical records, autopsy reports, and the death certificate in a blinded fashion by local and central physician adjudicators.
Table 1

Cardiovascular Disease and Mortality Outcomes Ascertainment in WHI

Study OutcomeDefinition and Confirmation of Outcomes
Non-fatal myocardial infarctionStandardized criteria for diagnostic electrocardiography changes, elevated cardiac enzymes or both
RevascularizationDocumentation of the procedure in the medical record.
AnginaHospital record, angiography evidence, diagnostic stress test, or documented physician diagnosis and medical treatment
Congestive heart failureHospital record and diagnostic confirmatory tests
Fatal coronary heart diseaseDocumentation in the hospital record, autopsy report or cause of death on the death certificate with evidence of previous coronary heart disease
StrokeDocumentation in the medical record of neurologic deficit of rapid onset consistent with stroke and lasting for at least 24 h or until death
Death from other cardiovascular diseaseConfirmatory evidence in the medical records as ascertained by physician adjudicators
Cardiovascular Disease and Mortality Outcomes Ascertainment in WHI

OPACH falls surveillance and data collection

To monitor safety, the OPACH study conducted surveillance on incident falls for one year after accelerometry and collected information about all injuries and fall-related injuries that required medical care. Incident falls were ascertained using a 13-month calendar distributed to OPACH participants to record daily if they had a fall (“no fall” or “yes, I fell”). Calendar pages were sent back monthly, data were entered and dates of reported falls were tracked. Participants were mailed a reminder postcard if calendars were not returned and, if a woman lost or misplaced any calendar pages, a new calendar was sent. The first month of each woman’s calendar corresponded to the month that she wore the accelerometer. Falls surveillance began in March 2012 and was completed in March 2015. When a fall was reported on a calendar page, participants were interviewed by telephone about the circumstances of the fall, including events leading up to the fall, physical activities (both leisure and non-leisure) engaged in at the time of the fall, location of the fall (inside or outside of the home), whether injuries resulted and, if so, the body region and type of injury (particularly, any fractures), and the highest level of medical care received for all injuries. For women who fell multiple times within a month, data collection was limited to the first two injury falls and first two non-injury falls. Participants could be contacted multiple times if they reported falling on more than one calendar page over the 13-month follow-up period. Due to limited resources, beginning in April 2013, interviews were conducted among 100% of falls reported by the most physically active women - defined as those in the highest quintile (≥21 MET-hours/week) of self-reported total recreational PA - and 20% of falls reported from all other women were selected to be interviewed [17]. As shown in Fig. 1, 6,580 women received a 13-month calendar for falls surveillance, of whom, 6,118 (93%) returned an accelerometer with usable data. Of these, 5,776 (94%) women returned at least 1 month of calendar pages and 4,246 (69%) women returned 12–13 months of calendar pages. Among the over 63,600 pages of calendar months returned, 5,980 falls were reported and 3,375 of these falls were sent for interviews. A total of 2,577 (76%) fall interviews were completed from 1,492 women, 416 (28%) of whom were among the most physically active. Reasons that fall interviews were not completed included that the participant did not remember falling, could not be contacted, refused the interview, or was deceased.
Fig. 1

Strobe Diagram for Falls Surveillance in the OPACH Study

Strobe Diagram for Falls Surveillance in the OPACH Study

Accelerometer data collection

The hip-worn accelerometer was placed at the iliac crest and secured with a belt. Women were asked to wear the accelerometer for 7 days during both waking and sleeping hours, except when bathing or swimming, starting the day after they complete their home visit or received their mailed package. To isolate sleeping time, participants recorded time in and out of bed on the OPACH sleep log [18]. The accelerometer was preset to begin data collection at a specified date and time. The device provided no feedback to the participant about their PA. As shown in Fig. 2, 6,721 (95%) women returned their accelerometers and of these, 6,489 (92%) had some data for analysis. The 569 women who did not return accelerometers with usable data were somewhat more likely to be African-American, had poorer self-reported health, lower physical function scores, higher levels of depressive symptoms and higher prevalence of past cardiovascular disease, but were less likely to report a fall in the past year when compared to the women with accelerometer data.
Fig. 2

Strobe Diagram for Accelerometer Data in the OPACH Study

Strobe Diagram for Accelerometer Data in the OPACH Study

Accelerometer data processing

Accelerometer data were measured and saved at a rate of 30 times per second (i.e., at 30 hertz). When devices were returned from participants, the data were downloaded and saved for long-term storage. Over the data collection phase of the study, the ActiGraph software (ActiLife) versions 6.0.0 to 6.101 were used. Data were processed using ActiLife Firmware v2.4 and the activity counts for the three orthogonal axes at which acceleration was measured were output for every 15-s epoch using the normal frequency filter mode and the low frequency filter mode, separately. Data from the three axes were used to compute the vector magnitude (VM) by taking the square root of the sum of the vertical axis squared, the anterior-posterior axis squared, and the medial-lateral axis squared. A computer-based automated algorithm, in alignment with the sleep logs and visual inspection, was used to identify the window of days with the maximum amount wear over a consecutive 7 day period [18]. When available, the sleep log data were used to identify periods when the participant reported being out of bed (vs. in bed). To maximize the use of accelerometer data when sleep logs were missing or were suspected to have reporting error, mean values for in-bed and out-of-bed times were imputed for each participant if at least one day of sleep log data were recorded. Population mean in-bed and out-of-bed times were used for women with no sleep log data. Automated methods for identifying in-bed periods are currently being explored [19, 20]. Accelerometer non-wear was defined by an interval of at least 90 consecutive minutes of zero VM counts per minute, with allowance for 2-min windows including nonzero VM counts as long as no counts were detected during the 30 min upstream and downstream of each window and that the cumulative duration of consecutive upstream and downstream zeros were ≥90 min [21, 22]. Any nonzero VM counts (except the allowed short intervals) were considered wear time. An adherent day was defined as ≥10 h of accelerometer wear time during periods the participant was out-of-bed.

Covariate data collection

The OPACH PA Questionnaire [see Additional File 1] was completed by women in their homes and mailed back to the WHI Clinical Coordinating Center for data entry. Table 2 (below) summarizes the measures included in the questionnaire and the origin of validated scales.
Table 2

Summary and sources of measures used in OPACH Physical Activity Questionnaire

Survey MeasureQuestion NumberSource (within References)
WHI self-reported physical activity1–4[17]
Borg scale assessment of relative intensity5[32]
Rating of perceived capacity scale6–7[33]
WHI self-reported sedentary behavior8–10[17]
CARDIA study sedentary behavior scale11–12[34, 35]
Short Falls Efficacy Scale International13[36]
Participation in falls prevention programs18–19Original, newly developed questions
Falls history assessment20–21[37]
Engagement in physical activity during fall and injurious fall; injurious fall history assessment22–26Original, newly developed questions
Urban environment and physical activity27[38]
Neighborhood Environmental Walkability Scale - select subscales (neighborhood type and crime safety)28–29[39]
CHAMPS self-reported physical activity assessment30[40]

Abbreviations: CARDIA Coronary Artery Risk Development in Young Adults, CHAMPS Community Health Activities Model Program for Seniors, WHI Women’s Health Initiative

Summary and sources of measures used in OPACH Physical Activity Questionnaire Abbreviations: CARDIA Coronary Artery Risk Development in Young Adults, CHAMPS Community Health Activities Model Program for Seniors, WHI Women’s Health Initiative The health status of OPACH participants has been extensively and continuously characterized since their WHI enrollment in 1993–1998. Information was collected by interview and/or self-administered questionnaires for all participants on age, race/ethnicity, education, age at menopause, hormone therapy use, medication use (e.g., statins, lipid-lowering drugs, antihypertensive drugs), treated diabetes, personal and parental history of major chronic diseases, and physical functioning using the RAND SF-36 instrument [23]. A medication inventory was collected by mail just prior to the start of the Long Life Study. As part of the Long Life Study protocol, a fasting blood draw was collected during the participant’s home visit. Biomarkers (glucose, insulin, creatinine, high-sensitivity C-reactive protein, high and low density lipoprotein cholesterol, triglyceride, total cholesterol) were measured at the University of Minnesota. Of the 7,875 Long Life Study participants, 7,325 (93%) have biomarker data available. Of these, 5,100 (70%) participated in the OPACH study.

OPACH calibration study

No standard was available to classify intensity of PA, and to distinguish sedentary behavior from light PA, using accelerometer data in older adults. Therefore, we conducted a separate laboratory-based calibration study in women ages 60 to 91 years to determine accelerometer count cutpoints that best distinguish levels of PA volume intensity in older women. Details of the calibration study design and results have been published previously [24]. Traditional accelerometer cutpoints were found to be too high for older women resulting in PA being underestimated [11, 25]. Traditional cutpoints were derived using vertical axis accelerometer counts, so Fig. 3a and b present OPACH vertical axis count cutpoints to allow for accurate comparisons. Figure 3a displays two different vertical axis count cutpoints for light intensity PA in OPACH calibration study participants. The traditional cutpoint for sedentary behavior of <100 counts per minute on the vertical axis [10] results in more light intensity PA minutes being misclassified as sedentary (false negatives) causing an underestimation of light intensity PA minutes and overestimation of sedentary minutes among OPACH participants. Similarly, Fig. 3b shows that the vertical axis count cutpoint for moderate-to-vigorous PA (MVPA) from the calibration study (> = 1320 counts/minute) was lower than a commonly used cutpoint (> = 1952 counts/minute) [26]. Again, using the higher cutpoint would cause an underestimation of MVPA for women in the OPACH study.
Fig. 3

a Traditional vs. OPACH Calibration Study Cutpoints for Sedentary Behavior. b Traditional vs. OPACH Calibration Study Cutpoints for Moderate-to-Vigorous Intensity Physical Activity

a Traditional vs. OPACH Calibration Study Cutpoints for Sedentary Behavior. b Traditional vs. OPACH Calibration Study Cutpoints for Moderate-to-Vigorous Intensity Physical Activity The OPACH Calibration Study reported intensity cutpoints derived from different methods of analyzing the data [24]. OPACH chose the method that defined a MET as 3.0 ml/kg/min and with data processed using the normal frequency filter, where cutpoints were derived by balancing false positive and false negatives. A MET value of 3.0 ml/kg/min is slightly lower than the traditionally defined value of 1 MET = 3.5 ml/kg/min, but better reflects observed resting energy expenditure of older adults studied with indirect calorimetry [24, 27, 28]. This resulted in the categorization of PA intensity as shown in Table 3.
Table 3

Categorization of Physical Activity Intensity Levels for Older Women in the OPACH Calibration Study

Intensity LevelVector Magnitude Cutpoint Values (counts per 15-s)
Sedentary0–18
Low light19–225
High light226–518
Moderate-to-Vigorous≥519
Categorization of Physical Activity Intensity Levels for Older Women in the OPACH Calibration Study

Baseline characteristics

Table 4 describes demographic, health behavior and health status characteristics by four age groups for the 6,489 women with accelerometer data. Most women were in their 70s (40%) or 80s (46%), while approximately 10% were in their 60s and 4% were age 90 years or older. Non-Hispanic Black and Hispanic/Latina women represented half of the sample and were generally younger than the Non-Hispanic White women in the study. Physical functioning, measured both through the RAND SF-36 survey [23] and the SPPB test [14], decreased as age increased. Likewise, self-reported PA levels decreased across incremental age groups. As women aged, they were more likely to have fallen in the past year and were more concerned about falling in the future. Average resting systolic blood pressure (SBP) was higher as age increased; however, average resting diastolic blood pressure, waist circumference, weight, and body mass index (BMI) were lower.
Table 4

Baseline characteristics of OPACH participants by age group

Age Group, years
Total63–6970–7980–8990+ p-value
N (%)6489666 (10.3)2600 (40.1)2953 (45.5)270 (4.2)
Race/Ethnicity, n (%)
 Non-Hispanic White3205 (49.4)94 (2.9)697 (21.8)2192 (68.4)222 (6.9)<0.001
 Non-Hispanic Black2187 (33.7)373 (17.1)1264 (57.8)511 (23.4)39 (1.8)
 Hispanic/Latina1097 (16.9)199 (18.1)639 (58.3)250 (22.8)9 (0.8)
Education, n (%)
 High School or less1316 (20.4)101 (7.7)499 (37.9)652 (49.5)64 (4.9)0.002
 Some College2496 (38.7)267 (10.7)1024 (41.0)1111 (44.5)94 (3.8)
 College Graduate or more2634 (40.9)293 (11.1)1056 (40.1)1174 (44.6)111 (4.2)
 Current Smoker, n (%)164 (2.8)35 (21.3)81 (49.4)47 (28.7)1 (0.6)<0.001
Alcohol Use, n (%)
 Non-drinker2230 (37.9)203 (9.1)912 (40.9)1022 (45.8)93 (37.8)0.12
  < 1 drink per week2008 (34.1)210 (10.5)820 (40.8)889 (44.3)89 (36.2)
  ≥ 1 drink per week1651 (28.0)176 (10.7)617 (37.4)794 (48.1)61 (26.0)
  Excellent or Very Good Self-Rated Health, n (%)2977 (50.8)338 (11.4)1216 (40.9)1321 (44.4)102 (3.4)<0.001
  RAND SF-36 Physical Function Score, mean (SD)67.9 (26.0)78.9 (23.1)73.0 (25.0)62.5 (25.3)48.3 (25.3)<0.001
  Depressive Symptoms Score, mean (SD)0.03 (0.11)0.04 (0.15)0.03 (0.12)0.02 (0.09)0.01 (0.07)<0.001
  Self-Reported Physical Activity, MET-hrs/week, mean (SD)11.9 (14.0)15.0 (16.5)13.3 (14.8)10.4 (12.8)6.6 (8.9)<0.001
 CHAMPS Expenditure, MET-hrs/week, mean (SD)29.1 (26.8)34.8 (32.2)31.7 (29.0)26.5 (23.4)18.9 (18.3)<0.001
  CARDIA Scale, sedentary hours/week, mean (SD)56.4 (22.7)58.3 (25.3)57.8 (24.1)54.7 (20.6)54.7 (20.9)<0.001
Falls in past 12 months, n (%)
 None4503 (69.4)493 (11.0)1870 (41.5)1974 (43.8)166 (3.7)<0.001
 One time1258 (19.4)112 (8.9)484 (38.5)602 (47.9)60 (4.8)
 Two or more times728 (11.2)61 (8.4)246 (33.8)377 (51.8)44 (6.0)
 Falls Efficacy Score, mean (SD)10.7 (4.2)9.6 (3.8)10.1 (3.8)11.3 (4.3)13.3 (5.1)<0.001
 Short Physical Performance Battery score, mean (SD)8.2 (2.5)9.2 (2.1)8.6 (2.3)7.7 (2.6)6.5 (2.9)<0.001
 Systolic Blood Pressure, mean (SD)125.7 (14.3)122.6 (12.9)125.2 (13.8)126.6 (14.7)127.9 (16.4)<0.001
 Diastolic Blood Pressure, mean (SD)72.5 (8.8)73.6 (8.1)73.3 (8.6)71.8 (9.0)71.0 (9.2)<0.001
 Waist, inches, mean (SD)35.5 (5.5)36.1 (5.5)36.1 (5.7)35.0 (5.2)33.8 (5.1)<0.001
 Weight, lbs, mean (SD)158.4 (34.4)171.8 (37.5)166.1 (35.9)150.6 (30.0)138.3 (25.9)<0.001
 Body Mass Index, kg/m2, mean (SD)28.2 (5.8)29.9 (6.2)29.3 (6.1)27.1 (5.2)25.9 (4.8)<0.001
Body Mass Index Categories, n (%)
  < 25 kg/m2 1944 (32.1)128 (6.6)627 (32.3)1065 (54.8)124 (6.4)<0.001
 25–<30 kg/m2 2199 (36.3)209 (9.5)868 (39.5)1032 (46.9)90 (4.1)
  ≥ 30 kg/m2 1917 (31.6)259 (13.5)938 (48.9)677 (35.3)43 (2.2)
Medical History
 Stroke459 (7.1)21 (4.6)134 (29.2)271 (59.0)33 (7.2)<0.001
 Congestive Heart Failure133 (2.1)9 (6.8)41 (30.8)73 (54.9)10 (7.5)0.013
 Total CVD1327 (20.5)92 (6.9)472 (35.6)687 (51.8)76 (5.7)<0.001
 Hip fracture188 (2.9)4 (2.1)24 (12.8)133 (70.7)27 (14.4)<0.001
 Any clinical fracture2202 (33.9)150 (6.8)775 (35.2)1156 (52.5)121 (5.5)<0.001
 Diabetes2078 (32.0)237 (11.4)933 (44.9)846 (40.7)62 (3.0)<0.001
 Osteoarthritis4000 (61.6)404 (10.1)1599 (40.0)1817 (45.4)180 (4.5)0.36
 Invasive cancer992 (15.3)72 (7.3)391 (39.4)488 (49.2)41 (4.1)0.003
 Breast cancer480 (7.4)44 (9.2)216 (45.0)202 (42.1)18 (3.8)0.15

Abbreviations: CARDIA Coronary Artery Risk Development in Young Adults, CHAMPS Community Health Activities Model Program for Seniors, CVD cardiovascular disease, MET Metabolic equivalents, OPACH Objective Physical Activity and Cardiovascular Health, SD Standard deviation

Baseline characteristics of OPACH participants by age group Abbreviations: CARDIA Coronary Artery Risk Development in Young Adults, CHAMPS Community Health Activities Model Program for Seniors, CVD cardiovascular disease, MET Metabolic equivalents, OPACH Objective Physical Activity and Cardiovascular Health, SD Standard deviation Of the 6,489 women with accelerometer data, 6,126 wore the accelerometer while out of bed for at least 4 days for at least 10 h each day. Table 5 shows the characteristics of adherent women by quartiles of average VM counts per 15-s epoch. Consistent with the self-reported PA levels in Table 4, younger women had higher levels of PA. White women were more likely (30%) to be in the lowest PA quartile compared with Black women (24%) and Hispanic/Latina women (13%). Women in the highest quartile of PA had a higher frequency of excellent or very good self-rated health (33 vs. 16% among women in the lowest quartile of PA) and of not falling in the past year. Furthermore, physical functioning and self-reported PA were higher and average SBP, waist circumference, weight, and BMI were lower among women in the highest quartile of PA.
Table 5

Baseline characteristics of 6,126 OPACH participants by quartiles of accelerometer measured physical activity

Quartiles of average VM per 15-s epoch (adherent days only)
Total<70.770.7–<95.295.2–<126.0≥126.0 p-value
Age group, years, n (%)
 63–69627 (10.2)67 (10.7)98 (15.6)169 (27.0)293 (46.7)<0.001
 70–792448 (40.0)417 (17.0)600 (24.5)664 (27.1)767 (31.3)
 80–892794 (45.6)908 (32.5)767 (27.5)663 (23.7)456 (16.3)
 90+257 (4.2)139 (54.1)67 (26.1)36 (14.0)15 (5.8)
Race/Ethnicity, n (%)
 Non-Hispanic White3046 (49.7)911 (29.9)779 (25.6)726 (23.8)630 (20.7)<0.001
 Non-Hispanic Black2047 (33.4)489 (23.9)541 (26.4)519 (25.4)498 (24.3)
 Hispanic/Latina1033 (16.9)131 (12.7)212 (20.5)287 (27.8)403 (39.0)
Education, n (%)
 High School or less1237 (20.3)311 (25.1)315 (25.5)307 (24.8)304 (24.6)0.05
 Some College2349 (38.6)620 (26.4)610 (26.0)555 (23.6)564 (24.0)
 College Graduate or more2499 (41.1)590 (23.6)593 (23.7)655 (26.2)661 (26.5)
 Current Smoker, n (%)159 (2.9)58 (36.5)38 (23.9)38 (23.9)25 (15.7)0.001
Alcohol Use, n (%)
 Non-drinker2089 (37.4)589 (28.2)571 (27.3)500 (23.9)429 (20.5)<0.001
  < 1 drink per week1912 (34.2)477 (25.0)479 (25.1)490 (25.6)466 (24.4)
  ≥ 1 drink per week1589 (28.4)290 (18.3)342 (21.5)429 (27.0)528 (33.2)
 Excellent or Very Good Self-Rated Health, n (%)2852 (51.3)469 (16.4)665 (23.3)781 (27.4)937 (32.9)<0.001
 RAND SF-36 Physical Function Score, mean (SD)68.2 (25.8)50.4 (26.5)66.0 (24.7)73.4 (22.0)82.0 (18.6)<0.001
 Depressive Symptoms Score, mean (SD)0.03 (0.11)0.03 (0.12)0.03 (0.10)0.02 (0.10)0.02 (0.10)0.31
 Self-Reported Physical Activity, MET-hrs/week, mean (SD)12.0 (14.1)6.3 (9.1)9.9 (11.1)13.3 (13.9)18.4 (17.6)<0.001
CHAMPS Expenditure, MET-hrs/week, mean (SD)29.4 (26.9)18.8 (18.1)25.0 (20.7)32.4 (27.4)41.0 (33.3)<0.001
CARDIA Scale, sedentary hours/week, mean (SD)56.3 (22.6)63.2 (23.0)58.4 (22.6)54.6 (21.8)49.6 (20.7)<0.001
Falls in past 12 months, n (%)
 None4256 (69.5)1010 (23.7)1065 (25.0)1068 (25.1)1113 (26.2)<0.001
 One time1195 (19.5)298 (24.9)307 (25.7)307 (25.7)283 (23.7)
 Two or more times675 (11.0)223 (33.0)160 (23.7)157 (23.3)135 (20.0)
 Falls Efficacy Score, mean (SD)10.7 (4.1)12.6 (4.9)10.6 (3.8)10.2 (3.7)9.4 (3.3)<0.001
 Short Physical Performance Battery score, mean (SD)8.2 (2.5)6.8 (2.7)8.1 (2.4)8.7 (2.2)9.3 (2.1)<0.001
 Systolic Blood Pressure, mean (SD)125.7 (14.3)128.1 (15.2)126.4 (14.5)125.2 (14.0)123.2 (13.2)<0.001
 Diastolic Blood Pressure, mean (SD)72.5 (8.8)73.1 (9.5)72.6 (8.9)72.3 (8.6)72.1 (8.0)0.03
 Waist, inches, mean (SD)35.4 (5.5)37.4 (5.9)36.0 (5.2)34.9 (5.2)33.3 (4.6)<0.001
 Weight, lbs, mean (SD)157.9 (34.1)166.9 (38.2)160.3 (34.8)155.9 (31.6)148.8 (28.5)<0.001
 Body Mass Index, kg/m2, mean (SD)28.1 (5.7)29.7 (6.3)28.7 (5.7)27.7 (5.5)26.4 (4.8)<0.001
Body Mass Index Categories, n (%)
  < 25 kg/m2 1868 (32.5)328 (17.6)400 (21.4)495 (26.5)645 (34.5)<0.001
 25–<30 kg/m2 2076 (36.2)474 (22.8)524 (25.2)562 (27.1)516 (24.9)
  ≥ 30 kg/m2 1796 (31.3)597 (33.2)516 (28.7)395 (22.0)288 (16.0)
Medical History
 Stroke427 (7.0)164 (38.4)123 (28.8)79 (18.5)61 (14.3)<0.001
 Congestive Heart Failure124 (2.0)67 (54.0)26 (21.0)22 (17.7)9 (7.3)<0.001
 Total CVD1234 (20.1)441 (35.7)329 (26.7)273 (22.1)191 (15.5)<0.001
 Hip fracture177 (2.9)72 (40.7)49 (27.7)39 (22.0)17 (9.6)<0.001
 Any clinical fracture2060 (33.6)580 (28.2)508 (24.7)508 (24.7)464 (22.5)<0.001
 Diabetes1928 (31.5)603 (31.3)529 (27.4)442 (22.9)354 (18.4)<0.001
 Osteoarthritis3748 (61.2)974 (26.0)960 (25.6)930 (24.8)884 (23.6)0.005
 Invasive cancer942 (15.4)292 (31.0)252 (26.8)220 (23.4)178 (18.9)<0.001
 Breast cancer457 (7.5)138 (30.2)124 (27.1)99 (21.7)96 (21.0)0.009

Abbreviations: CARDIA Coronary Artery Risk Development in Young Adults, CHAMPS Community Health Activities Model Program for Seniors, CVD Cardiovascular disease, MET Metabolic equivalents, OPACH Objective Physical Activity and Cardiovascular Health, SD Standard deviation

Baseline characteristics of 6,126 OPACH participants by quartiles of accelerometer measured physical activity Abbreviations: CARDIA Coronary Artery Risk Development in Young Adults, CHAMPS Community Health Activities Model Program for Seniors, CVD Cardiovascular disease, MET Metabolic equivalents, OPACH Objective Physical Activity and Cardiovascular Health, SD Standard deviation

Discussion

The OPACH Study is one of the first, large prospective studies in older women to measure PA objectively using a state-of-the-science triaxial accelerometer. The cohort is unique in its diversity (2,187 Non-Hispanic Black and 1,097 Hispanic/Latina women) and in the richness of adjudicated CVD, cancer, hip fracture and other outcomes. Moreover, physical function, activities of daily living disability, quality of life, and incident hospitalizations are being measured annually through at least the year 2020. The OPACH study will address gaps in knowledge about PA, falls, and fall-related injuries. Injuries are the most common adverse event from participation in PA [7]. However, evidence is limited about how overall risk of major injuries requiring medical care depends upon level of PA [29]. Despite an extensive literature on exercise and falls in older adults [30], there are no data quantifying fall and fall-related injury risk in relation to accelerometer-measured PA in older women. RCT data clearly show that exercise programs reduce risk of falls in older adults [7], but it is unknown whether these programs might increase risk of other types of injury, for example, through increased exposure to road traffic as an exercising pedestrian. Observational data in older populations performing their usual activities (as opposed to a supervised intervention) are needed to characterize more completely both the benefits and risks of PA, particularly the habitual low levels of PA not typically captured by self-reported questionnaires. The OPACH Calibration study results clearly showed that traditional cutpoints underestimate the amount of MVPA and overestimate sedentary time in older women [24]. Although we are providing novel information on age and gender appropriate intensity cutpoints for PA, we were unable to design a study that would provide individualized “relative-intensity” cutpoints that account for individual cardiorespiratory fitness. This is an important direction for future research. Our capture of raw accelerometer data in this large population is leading to novel uses of that go beyond defining intensity levels to capture types of PA (walking, sit-to-stand transitions, standing time) using machine-learning algorithms [31], latent class patterns of PA and sedentary behavior, and other inventive summaries. We strongly recommend the capture and storage of raw accelerometer data in all future studies so that new strategies for analyzing the data can be further developed and employed. The OPACH Study is a cost-effective approach to creating an unparalleled dataset for understanding the health benefits of PA for older women. Our primary objectives focus first on CVD health and falls in older women. However, the addition of accelerometer data to the WHI Program will have tremendous value in studying other phenotypes related to healthy aging, including inflammatory biomarkers, breast and colon cancer, diabetes, and physical disability.
  37 in total

1.  Outcomes ascertainment and adjudication methods in the Women's Health Initiative.

Authors:  J David Curb; Anne McTiernan; Susan R Heckbert; Charles Kooperberg; Janet Stanford; Michael Nevitt; Karen C Johnson; Lori Proulx-Burns; Lisa Pastore; Michael Criqui; Sandra Daugherty
Journal:  Ann Epidemiol       Date:  2003-10       Impact factor: 3.797

2.  Amount of time spent in sedentary behaviors in the United States, 2003-2004.

Authors:  Charles E Matthews; Kong Y Chen; Patty S Freedson; Maciej S Buchowski; Bettina M Beech; Russell R Pate; Richard P Troiano
Journal:  Am J Epidemiol       Date:  2008-02-25       Impact factor: 4.897

3.  METs and accelerometry of walking in older adults: standard versus measured energy cost.

Authors:  Katherine S Hall; Cheryl A Howe; Sharon R Rana; Clara L Martin; Miriam C Morey
Journal:  Med Sci Sports Exerc       Date:  2013-03       Impact factor: 5.411

4.  Design of the Women's Health Initiative clinical trial and observational study. The Women's Health Initiative Study Group.

Authors: 
Journal:  Control Clin Trials       Date:  1998-02

5.  Physical activity in U.S.: adults compliance with the Physical Activity Guidelines for Americans.

Authors:  Jared M Tucker; Gregory J Welk; Nicholas K Beyler
Journal:  Am J Prev Med       Date:  2011-04       Impact factor: 5.043

6.  Relative intensity of physical activity and risk of coronary heart disease.

Authors:  I-Min Lee; Howard D Sesso; Yuko Oguma; Ralph S Paffenbarger
Journal:  Circulation       Date:  2003-03-04       Impact factor: 29.690

7.  Physical activity in the United States measured by accelerometer.

Authors:  Richard P Troiano; David Berrigan; Kevin W Dodd; Louise C Mâsse; Timothy Tilert; Margaret McDowell
Journal:  Med Sci Sports Exerc       Date:  2008-01       Impact factor: 5.411

8.  The Short FES-I: a shortened version of the falls efficacy scale-international to assess fear of falling.

Authors:  Gertrudis I J M Kempen; Lucy Yardley; Jolanda C M van Haastregt; G A Rixt Zijlstra; Nina Beyer; Klaus Hauer; Chris Todd
Journal:  Age Ageing       Date:  2007-11-20       Impact factor: 10.668

9.  Development and application of an automated algorithm to identify a window of consecutive days of accelerometer wear for large-scale studies.

Authors:  Eileen Rillamas-Sun; David M Buchner; Chongzhi Di; Kelly R Evenson; Andrea Z LaCroix
Journal:  BMC Res Notes       Date:  2015-06-26

10.  Calibrating physical activity intensity for hip-worn accelerometry in women age 60 to 91 years: The Women's Health Initiative OPACH Calibration Study.

Authors:  Kelly R Evenson; Fang Wen; Amy H Herring; Chongzhi Di; Michael J LaMonte; Lesley Fels Tinker; I-Min Lee; Eileen Rillamas-Sun; Andrea Z LaCroix; David M Buchner
Journal:  Prev Med Rep       Date:  2015
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  37 in total

1.  Using Isotemporal Analyses to Examine the Relationships Between Daytime Activities and Cancer Recurrence Biomarkers in Breast Cancer Survivors.

Authors:  Kelsie M Full; Eileen Johnson; Michelle Takemoto; Sheri J Hartman; Jacqueline Kerr; Loki Natarajan; Ruth E Patterson; Dorothy D Sears
Journal:  J Phys Act Health       Date:  2020-02-01

2.  Accelerometer-Measured Physical Activity and Mortality in Women Aged 63 to 99.

Authors:  Michael J LaMonte; David M Buchner; Eileen Rillamas-Sun; Chongzhi Di; Kelley R Evenson; John Bellettiere; Cora E Lewis; I-Min Lee; Lesly F Tinker; Rebecca Seguin; Oleg Zaslovsky; Charles B Eaton; Marcia L Stefanick; Andrea Z LaCroix
Journal:  J Am Geriatr Soc       Date:  2017-11-16       Impact factor: 5.562

3.  Hot Deck Multiple Imputation for Handling Missing Accelerometer Data.

Authors:  Nicole M Butera; Siying Li; Kelly R Evenson; Chongzhi Di; David M Buchner; Michael J LaMonte; Andrea Z LaCroix; Amy Herring
Journal:  Stat Biosci       Date:  2018-10-29

4.  The Relationship of Accelerometer-Assessed Standing Time With and Without Ambulation and Mortality: The WHI OPACH Study.

Authors:  Purva Jain; John Bellettiere; Nicole Glass; Michael J LaMonte; Chongzhi Di; Robert A Wild; Kelly R Evenson; Andrea Z LaCroix
Journal:  J Gerontol A Biol Sci Med Sci       Date:  2021-01-01       Impact factor: 6.053

5.  A comparison of accelerometry analysis methods for physical activity in older adult women and associations with health outcomes over time.

Authors:  Katie J Thralls; Suneeta Godbole; Todd M Manini; Eileen Johnson; Loki Natarajan; Jacqueline Kerr
Journal:  J Sports Sci       Date:  2019-06-14       Impact factor: 3.337

6.  Hypertension Treatment and Control and Risk of Falls in Older Women.

Authors:  Karen L Margolis; David M Buchner; Michael J LaMonte; Yuzheng Zhang; Chongzhi Di; Eileen Rillamas-Sun; Julie Hunt; Farha Ikramuddin; Wenjun Li; Steve Marshall; Dori Rosenberg; Marcia L Stefanick; Robert Wallace; Andrea Z LaCroix
Journal:  J Am Geriatr Soc       Date:  2019-01-07       Impact factor: 5.562

7.  Leisure-time physical activity and leukocyte telomere length among older women.

Authors:  Aladdin H Shadyab; Michael J LaMonte; Charles Kooperberg; Alexander P Reiner; Cara L Carty; Todd M Manini; Lifang Hou; Chongzhi Di; Caroline A Macera; Linda C Gallo; Richard A Shaffer; Sonia Jain; Andrea Z LaCroix
Journal:  Exp Gerontol       Date:  2017-05-25       Impact factor: 4.032

8.  Parameterizing and validating existing algorithms for identifying out-of-bed time using hip-worn accelerometer data from older women.

Authors:  John Bellettiere; Yiliang Zhang; Vincent Berardi; Kelsie M Full; Jacqueline Kerr; Michael J LaMonte; Kelly R Evenson; Melbourne Hovell; Andrea Z LaCroix; Chongzhi Di
Journal:  Physiol Meas       Date:  2019-07-30       Impact factor: 2.833

9.  Sedentary Behavior and Prevalent Diabetes in 6,166 Older Women: The Objective Physical Activity and Cardiovascular Health Study.

Authors:  John Bellettiere; Genevieve N Healy; Michael J LaMonte; Jacqueline Kerr; Kelly R Evenson; Eileen Rillamas-Sun; Chongzhi Di; David M Buchner; Melbourne F Hovell; Andrea Z LaCroix
Journal:  J Gerontol A Biol Sci Med Sci       Date:  2019-02-15       Impact factor: 6.053

10.  Accelerometer-Measured Sleep Duration and Clinical Cardiovascular Risk Factor Scores in Older Women.

Authors:  Kelsie M Full; Atul Malhotra; Linda C Gallo; Jacqueline Kerr; Elva M Arredondo; Loki Natarajan; Michael J LaMonte; Marcia L Stefanick; Katie L Stone; Andrea Z LaCroix
Journal:  J Gerontol A Biol Sci Med Sci       Date:  2020-09-16       Impact factor: 6.053

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