Accepted Manuscript S (13) Reference: JAC To appear in: Journal of the American College of Cardiology

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Accepted Manuscript Non-HDL Cholesterol, Guideline Targets, and Population Percentiles for Secondary Prevention in a Clinical Sample of 1.3 Million Adults The Very Large Database of Lipids (VLDL-2 Study) Mohamed B. Elshazly, MD Seth S. Martin, MD Michael J. Blaha, MD, MPH Parag H. Joshi, MD Peter P. Toth, MD, PhD, FACC John W. McEvoy, MB BCh Mohammed A. Al-Hijji, MD Krishnaji R. Kulkarni, PhD Peter O. Kwiterovich, MD Roger S. Blumenthal, MD, FACC Steven R. Jones, MD, FACC PII: DOI: Reference: JAC 19162 S0735-1097(13)03075-1 10.1016/j.jacc.2013.07.045 To appear in: Journal of the American College of Cardiology Received Date: 24 April 2013 Revised Date: 10 July 2013 Accepted Date: 30 July 2013 Please cite this article as: Elshazly MB, Martin SS, Blaha MJ, Joshi PH, Toth PP, McEvoy JW, Al-Hijji MA, Kulkarni KR, Kwiterovich PO, Blumenthal RS, Jones SR, Non-HDL Cholesterol, Guideline Targets, and Population Percentiles for Secondary Prevention in a Clinical Sample of 1.3 Million Adults The Very Large Database of Lipids (VLDL-2 Study), Journal of the American College of Cardiology (2013), doi: 10.1016/j.jacc.2013.07.045. This is a PDF file of an unedited manuscript that has been accepted for publication. As a service to our customers we are providing this early version of the manuscript. The manuscript will undergo copyediting, typesetting, and review of the resulting proof before it is published in its final form. Please note that during the production process errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain.

Non-HDL Cholesterol, Guideline Targets, and Population Percentiles for Secondary Prevention in a Clinical Sample of 1.3 Million Adults The Very Large Database of Lipids (VLDL-2 Study) Brief Title: Non-HDL-C & LDL-C percentile discordance Mohamed B. Elshazly, MD,* Seth S. Martin, MD, Michael J. Blaha, MD, MPH, Parag H. Joshi, MD, Peter P. Toth, MD, PhD, FACC, John W. McEvoy, MB BCh, Mohammed A. Al- Hijji, MD, Krishnaji R. Kulkarni, PhD, Peter O. Kwiterovich, MD, Roger S. Blumenthal, MD, FACC, and Steven R. Jones, MD, FACC * Johns Hopkins Ciccarone Center for the Prevention of Heart Disease, Baltimore, MD, and Department of Cardiovascular Medicine, Cleveland Clinic, Cleveland, OH Johns Hopkins Ciccarone Center for the Prevention of Heart Disease, Baltimore, MD Department of Preventive Cardiology, CGH Medical Center, Sterling, IL, and University of Illinois College of Medicine, Peoria, IL Atherotech Diagnostics Lab, Birmingham, AL Address for corresponding author: Mohamed B. Elshazly, MD, Department of Cardiovascular Medicine, Cleveland Clinic, 9500 Euclid Avenue, J3-4, Cleveland, OH 44195 Telephone: +1-443-838-4476; Facsimile: +1-410-955-0374; E-mail: elshazm@ccf.org Funding and Role of Data Sponsor: Atherotech provided the investigators with de-identified data generated from commercial lipid analyses and did not provide payments for the research or manuscript writing and did not participate in data analysis or influence the conclusions. This study was initiated by the investigators and did not receive any specific funding. ME, SM and SJ take responsibility for the accuracy of the statistical analyses and had the sole authority on manuscript preparation and submission for publication. Disclosures: Drs. Elshazly, Martin, Blaha, Joshi, McEvoy, Al-Hijji, and Blumenthal have no disclosures. Dr. Toth: compensation for consultancy and lecturers from Abbott Laboratories, Aegerion, Amgen, Amylin, AstraZeneca, GlaxoSmithKline, Kowa, and Merck & Co. Krishnaji R. Kulkarni, PhD: Atherotech Diagnostics Lab research director and receives royalty from the University of Alabama in Birmingham, AL. Dr. Kwiterovich: compensation for consultancy from Merck & Co and research grants from Pfizer. Dr. Jones: Atherotech Diagnostics Lab, Scientific Advisory Board and research grant support; Labroots/Bioconference Live, unexercised stock options. Word count: 2243 1

Abstract Objectives: To examine patient-level discordance between population percentiles of non-hdl cholesterol (non-hdl-c) and LDL cholesterol (LDL-C). Background: Non-HDL-C is an alternative to LDL-C for risk stratification and lipid-lowering therapy. The justification for the present guideline-based non-hdl-c cutpoints of 30 mg/dl higher than LDL-C cutpoints remains largely untested. Methods: We assigned population percentiles to non-hdl-c and Friedewald-estimated LDL-C values of 1,310,440 U.S. adults with triglycerides < 400 mg/dl who underwent lipid testing by vertical spin density gradient ultracentrifugation (Atherotech, Birmingham, Alabama) from 2009 to 2011. Results: LDL-C cutpoints of 70, 100, 130, 160, and 190 mg/dl were in the same population percentiles as non-hdl-c values of 93, 125, 157, 190, and 223 mg/dl, respectively. Non-HDL- C reclassified a significant proportion of patients within a higher treatment category compared with Friedewald LDL-C, especially at LDL-C levels in the treatment range of high-risk patients and at triglyceride levels 150 mg/dl. Of patients with LDL-C < 70 mg/dl, 15% had a non- HDL-C 100 mg/dl (guideline-based cutpoint) and 25% had a non-hdl-c 93 mg/dl (percentile-based cutpoint); 22% and 50% respectively if triglycerides concurrently 150-199 mg/dl. Conclusions: There is significant patient-level discordance between non-hdl-c and LDL-C percentiles at lower LDL-C and higher triglycerides; a finding with implications for treatment of high-risk patients. Current non-hdl-c cutpoints for high-risk patients may need to be lowered to match percentiles of LDL-C cutpoints. Relatively small absolute reductions in non-hdl-c cutpoints result in substantial reclassification of patients to higher treatment categories with potential implications for risk assessment and treatment. Clinical trial info: VLDL-2; NCT01698489 Keywords: Non-HDL Cholesterol; LDL Cholesterol; discordance; percentiles; lipids; secondary prevention Abbreviations Cardiovascular Disease = CVD Low-Density Lipoprotein Cholesterol = LDL-C Non-High-Density Lipoprotein Cholesterol = Non-HDL-C High-Density Lipoprotein Cholesterol = HDL-C Very-Low-Density Lipoprotein Cholesterol = VLDL-C Intermediate-Density Lipoprotein Cholesterol = IDL-C Apolipoprotein B = ApoB Vertical Auto Profile = VAP National Health and Nutrition Examination Survey = NHANES The Very Large Database of Lipids = VLDL 2

Introduction Cardiovascular disease (CVD) is the leading cause of death in the developed world, accounting for 33% of deaths in the United States and 47% of deaths in Europe (1, 2). For the past 25 years, low-density lipoprotein cholesterol (LDL-C) has been the primary lipid parameter for risk stratification and goal-directed therapy. However, an epidemic of obesity and metabolic syndrome has evolved over the past few decades, mostly due to changes in diet and lifestyle. The current prevalence of metabolic syndrome is approximately 1 out of 3 U.S. adults (1). This became associated with an increasing prevalence of elevated triglyceride-rich remnant lipoproteins, characteristic of insulin resistance. These include very-low density lipoproteins (VLDL) and their remnants, intermediate-density lipoproteins (IDL), and chylomicron remnant particles whose contribution to atherogenic risk is accounted for by non-high density lipoprotein cholesterol (non-hdl-c) not LDL-C. Current guidelines recommend using non-hdl-c as a secondary treatment target in patients with triglycerides 200 mg/dl (3-5), setting non-hdl-c goals 30 mg/dl higher than respective LDL-C goals. However, some reports have suggested using non-hdl-c goals at the same population percentiles as the respective LDL-C goals (6, 7). In this report, we examine patient-level discordance between non-hdl-c and LDL-C percentiles at different LDL-C and triglyceride strata and implications for risk assessment and treatment. Methods Study Population We examined consecutive lipid profiles from 1,310,440 U.S. adults 18 years of age with triglycerides < 400 mg/dl who underwent direct ultracentrifugation of cholesterol by the 3

Vertical Auto Profile (VAP; Atherotech Diagnostics Lab, Birmingham, AL) from 2009 to 2011 (8, 9). Consecutive denotes that we only included the first available lipid profile for each patient. Consistent with routine clinical practice, LDL-C was estimated by the Friedewald formula, thus excluding patients with triglycerides 400 mg/dl (9, 10). VAP Lipid Measurement The VAP is an inverted rate zonal, single vertical spin, density-gradient ultracentrifugation technique that directly measures cholesterol concentrations of the five lipoprotein classes [LDL- C, VLDL-C, IDL-C, HDL-C, lipoprotein(a)] and their subclasses. Triglycerides were directly measured using the Abbott ARCHITECT C8000 system (Abbott Park, IL) (8, 9). The accuracy of VAP lipid parameters were cross-validated with reference standards as previously described (9). Data Management Raw individual patient data were extracted at Atherotech, cleaned of duplicate samples, then de-identified and transferred to the senior investigator. The master database, the Very Large Database of Lipids (VLDL), is maintained at The Johns Hopkins Hospital (Baltimore, MD) and registered on clinicaltrials.gov (NCT01698489). The Johns Hopkins Institutional Review Board declared the study exempt. Statistical Analysis Friedewald-estimated LDL-C was calculated as [total cholesterol HDL-C triglycerides/5]. Non-HDL-C was calculated as [total cholesterol HDL-C]. We assigned population percentiles to LDL-C and non-hdl-c, then determined the percentiles corresponding to LDL-C cutpoints in current guidelines (70, 100, 130, 160, and 190 mg/dl) (3-5). Reclassification was defined as present when non-hdl-c reclassified a patient within a 4

higher (upward) or lower (downward) treatment category compared with Friedewald LDL-C. The analysis was performed using guideline-based non-hdl-c cutpoints, defined as 30 mg/dl higher than LDL-C cutpoints, and percentile-based cutpoints, defined as those at equivalent percentiles to LDL-C cutpoints. We focused on upward reclassification since current guidelines recommend using non-hdl-c only as a secondary treatment target after the LDL-C target is reached; thus, downward reclassification becomes irrelevant. Statistical analyses and logarithmically scaled pseudocolor density plots were generated in R Version 2.15.1 (Vienna, Austria) and Stata Version 11.0 (College Station, TX). Results Population Characteristics Patients were 59±15 years old (mean±sd), 52% were women, and lipid parameter distributions were nearly super-imposable with recent lipid data from the National Health and Nutrition Examination Survey (NHANES) 2007-2008 (11), as previously described by our group (9) (Appendix Figure 1). Population Percentiles LDL-C cutpoints of 70, 100, 130, 160, and 190 mg/dl were at the same population percentiles as non-hdl-c values of 93, 125, 157, 190, and 223 mg/dl, respectively (Table 1). Non-HDL-C and LDL-C Percentile Discordance We visually assessed discordance between LDL-C and non-hdl-c percentiles and found greater discordance at lower LDL-C and higher triglycerides (Figure 1). Similarly, the absolute difference between non-hdl-c and LDL-C percentiles was more pronounced with greater ingroup variation at lower LDL-C and higher triglycerides (Appendix Figure 2). Treatment Category Reclassification by Non-HDL-C 5

When using conventional non-hdl-c cutpoints, non-hdl-c reclassified 10.5% (n=137,744) of the study population upward and 22.3% (n=291,499) downward. Using percentile-based cutpoints reclassified 14.2% (n=186,106) upward and 13.7% (n=178,860) downward (Figure 2). Upward reclassification occurred more frequently at lower LDL-C and higher triglycerides (for additional discussion, see the Appendix, Reclassification analysis). Of patients with LDL-C < 70 mg/dl, 15 % had a non-hdl-c 100 mg/dl (the guideline-based cutpoint), while 25% had a non-hdl-c 93 mg/dl (the percentile-based cutpoint); 22% and 50% respectively if triglycerides concurrently 150-199 mg/dl (Figure 3A). Similarly, of patients with LDL-C 70-99 mg/dl, 12% had a non-hdl-c 130 mg/dl while 17% had a non-hdl-c 125 mg/dl; 17% and 35% respectively if triglycerides concurrently 150-199 mg/dl (Figure 3B). Discussion Our study highlights the magnitude of patient-level discordance between LDL-C and non-hdl-c percentiles. They are most discordant when accuracy is most crucial, at low LDL-C and high triglycerides. Therefore, conventional non-hdl-c cutpoints for high-risk patients may need to be lowered to match percentiles of LDL-C cutpoints. Non-HDL-C: A Better Marker of CVD risk assessment and treatment The National Cholesterol Education Program Adult Treatment Panel III guidelines state that In most persons with triglycerides < 200 mg/dl, adding VLDL-C to LDL-C would be expected to provide little additional power to predict CVD (3); a disputable statement in lieu of the increasing prevalence of obesity and metabolic syndrome. Non-HDL-C represents the aggregate cholesterol content of apolipoprotein B (apob) containing atherogenic lipoproteins including LDL, VLDL, IDL, remnants and lipoprotein(a); in principle a broader, more inclusive 6

measure of atherogenic risk. Recent evidence suggests that non-hdl-c is superior for risk prediction and might be a more effective target for lipid lowering therapy particularly in highrisk patients (12-15). A meta-analysis of 233,455 patients showed that non-hdl-c is a more potent marker of CVD risk than LDL-C (16). Calculating the number of clinical events prevented by a high-risk treatment regimen of those > 70 th percentile of the US adult population, Sniderman et al. suggested that a non-hdl-c based strategy may prevent 300,000 more events than an LDL-C strategy over a 10-year period. In addition, non-hdl-c measurement comes at no additional cost or inconvenience since it is easily calculated from the standard lipid profile without requirement for prior fasting. Moreover, the adoption of non-hdl-c across all levels of triglycerides would substantially simplify implementation of clinical guidelines. Potential Implications for Guideline Development Guideline-based non-hdl-c cutpoints are based on the assumption that a normal VLDL-C exists when triglycerides are < 150 mg/dl; which is < 30 mg/dl as estimated by the Friedewald formula (3). More recent evidence suggests that a biologically optimal fasting triglyceride level is < 100 mg/dl (17); thus, a normal VLDL-C is likely closer to 20 mg/dl, also suggesting that non-hdl-c cutpoints should be 20 mg/dl higher than LDL-C cutpoints. Studying patients with acute coronary syndromes, Ballantyne et al. suggested that the current non-hdl-c goal should be lowered by 8 to 10 mg/dl in order to match LDL-C and apob treatment goals in the very-high-risk category (18). Other reports have recommended lowering non-hdl-c cutpoints to match percentiles of LDL-C cutpoints (6, 7). In our study, the non-hdl-c values with percentile equivalence to LDL-C cutpoints of 100 and 70 mg/dl were 125 and 93 mg/dl, respectively. Therefore, non-hdl-c cutpoints may need to be lowered by 5 7

mg/dl and 7 mg/dl for the high-risk and very-high-risk categories, respectively. This leads to substantial upward reclassification of patients particularly at concurrent high triglycerides. For example, of patients with LDL-C < 70 mg/dl and concurrent triglycerides 150-199 mg/dl, more than twice as many patients were reclassified upward when the non-hdl-c cutpoint was lowered from 100 mg/dl to 93 mg/dl (Figure 3A). Our study also showed that the current guidelines triglyceride threshold of 200 mg/dl for using non-hdl-c as a secondary treatment target may need to be lowered given that considerable upward reclassification occurs also at triglycerides 150-199 mg/dl (Figure 2). Study Limitations We have limited clinical and demographic data regarding the full risk factor profile of our population. Therefore, reclassification analyses are inferred on the basis of the lipid profile only and we cannot determine its impact on clinical outcomes. The nearly super-imposable age, sex, and lipid distributions between the VLDL and NHANES samples suggest that our study comprises a reasonable population of patients engaged in atherosclerosis prevention and treatment, not a special population that underwent VAP testing. We do not know the percentage of patients taking a statin. Perhaps, some samples in our study were acquired in a non-fasting state, but this is not uncommon in routine practice. Despite focusing on upward reclassification in accordance with current guidelines, there was considerable downward reclassification in patients with triglycerides < 150 mg/dl (Figure 2). The significance of downward reclassification remains unclear in the literature and current guidelines and whether these patients should be treated to LDL-C vs. non-hdl-c goal needs further scrutiny. Conclusion 8

Our study of 1.3 million patients builds on prior evidence that significant patient-level discordance exists between percentiles of LDL-C and non-hdl-c, particularly when accuracy is most crucial, at lower LDL-C and higher triglycerides. Therefore, lowering conventional non- HDL-C cutpoints for high-risk patients to match percentiles of LDL-C cutpoints as well as wider adoption of non-hdl-c in clinical practice may potentially improve secondary prevention outcomes and residual risk assessment and treatment. 9

References 1. Writing Group Members, Roger VL, Go AS, et al. Heart Disease and Stroke Statistics-2012 Update: A Report From the American Heart Association. Circulation 2012;125(1):e2 e220. 2. Nichols M, Townsend N, Luengo-Fernandez R, Leal J, Gray A, Scarborough P, Rayner M (2012). European Cardiovascular Disease Statistics 2012. European Heart Network, Brussels, European Society of Cardiology, Sophia Antipolis. 3. National Cholesterol Education Program (NCEP) Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults (Adult Treatment Panel III). Third Report of the National Cholesterol Education Program (NCEP) Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults (Adult Treatment Panel III) final report. Circulation 2002;106(25):3143 3421. 4. Genest J, McPherson R, Frohlich J, et al. 2009 Canadian Cardiovascular Society/Canadian guidelines for the diagnosis and treatment of dyslipidemia and prevention of cardiovascular disease in the adult - 2009 recommendations. Can J Cardiol 2009;25(10):567 579. 5. Developed with the special contribution of: European Association for Cardiovascular Prevention & Rehabilitation, Authors/Task Force Members, Reiner Z, et al. ESC/EAS Guidelines for the management of dyslipidaemias: The Task Force for the management of dyslipidaemias of the European Society of Cardiology (ESC) and the European Atherosclerosis Society (EAS). Eur Heart J 2011;32(14):1769 1818. 6. Contois JH, McConnell JP, Sethi AA, et al. Apolipoprotein B and Cardiovascular Disease Risk: Position Statement from the AACC Lipoproteins and Vascular Diseases Division Working Group on Best Practices. Clin Chem 2009;55(3):407 419. 7. Sniderman AD, De Graaf J, Couture P. Low-density lipoprotein-lowering strategies. Curr 10

Opin Cardiol 2012;27(4):405 411. 8. Kulkarni KR. Cholesterol profile measurement by vertical auto profile method. Clin Lab Med 2006;26(4):787 802. 9. Martin SS, Blaha MJ, Elshazly MB, et al. Friedewald Estimated versus Directly Measured Low-Density Lipoprotein Cholesterol and Treatment Implications. J Am Coll Cardiol 2013, doi:10.1016/j.jacc.2013.01.079. 10. Friedewald WT, Levy RI, Fredrickson DS. Estimation of the concentration of low-density lipoprotein cholesterol in plasma, without use of the preparative ultracentrifuge. Clin Chem 1972;18(6):499 502. 11. Kuklina EV, Yoon PW, Keenan NL. Trends in high levels of low-density lipoprotein cholesterol in the United States, 1999-2006. JAMA 2009;302(19):2104 2110. 12. Bittner V, Hardison R, Kelsey SF, et al. Non-high-density lipoprotein cholesterol levels predict five-year outcome in the Bypass Angioplasty Revascularization Investigation (BARI). Circulation 2002;106(20):2537 2542. 13. Cui Y, Blumenthal RS, Flaws JA, et al. Non-high-density lipoprotein cholesterol level as a predictor of cardiovascular disease mortality. Arch Intern Med 2001;161(11):1413 1419. 14. Varbo A, Benn M, Tybjærg-Hansen A, Jørgensen AB, Frikke-Schmidt R, Nordestgaard BG. Remnant cholesterol as a causal risk factor for ischemic heart disease. J Am Coll Cardiol 2013;61(4):427 436. 15. Boekholdt SM, Arsenault BJ, Mora S, et al. Association of LDL cholesterol, non-hdl cholesterol, and apolipoprotein B levels with risk of cardiovascular events among patients treated with statins: a meta-analysis. JAMA 2012;307(12):1302 1309. 16. Sniderman AD, Williams K, Contois JH, et al. A Meta-Analysis of Low-Density Lipoprotein 11

Cholesterol, Non-High-Density Lipoprotein Cholesterol, and Apolipoprotein B as Markers of Cardiovascular Risk. Circ Cardiovasc Qual Outcomes 2011;4(3):337 345. 17. Miller M, Stone NJ, Ballantyne C, et al. Triglycerides and cardiovascular disease: a scientific statement from the American Heart Association. Circulation 2011;123(20):2292 2333. 18. Ballantyne CM, Pitt B, Loscalzo J, Cain VA, Raichlen JS. Alteration of relation of atherogenic lipoprotein cholesterol to apolipoprotein B by intensive statin therapy in patients with acute coronary syndrome (from the Limiting UNdertreatment of lipids in ACS With Rosuvastatin [LUNAR] Trial). Am J Cardiol 2013;111(4):506 509. 12

Figure Legends Figure 1: Patient-level discordance between population percentiles of LDL-C and non- HDL-C. The total population (A) and four different triglyceride categories (B). The density of data is expressed by different shades of color, which represent increasing densities of patients per pixel, from light blue to purple. Figure 2: Treatment category reclassification by using guideline-based non-hdl-c cutpoints vs. percentile-based cutpoints for the total population. Four triglyceride categories are analyzed and each assigned a color, as depicted. Figure 3: Treatment category reclassification by using guideline-based non-hdl-c cutpoints vs. percentile-based cutpoints at secondary prevention LDL-C range. LDL-C < 70 mg/dl (A), and LDL-C 70-99 mg/dl (B). 13

Study Sample (N=1,310,440) NHANES (N=2,679)

Patient-level percentile discordance between non-hdl-c and LDL-C A) Total population, N = 1,310,440 B) By triglyceride categories Triglycerides <100 mg/dl N = 520,880 Triglycerides 100-149 mg/dl N = 398,174 Triglycerides 150-199 mg/dl N = 204,145 Triglycerides 200-399 mg/dl N = 187,241

Upward reclassification (%) Downward reclassification (%) 80 60 40 20 0 20 40 60 80 Guideline-based reclassification Reclassification, N (%) Guidelines based reclassification N= 429,243 (32.8) Reclassification analysis by triglyceride categories N = 1,310,440 Upward reclassification N= 137,744 (10.5) <100 mg/dl N=520,880 Downward reclassification N= 291,499 (22.3) 229,084 (44) 100-149 mg/dl N=398,174 62,415 (15.7) Population Percentile-based reclassification 150-199 mg/dl N=204,145 28,130 (13.8) 200-399 mg/dl N=187, 241 109,614 (58.5) Population percentile based reclassification N= 364,966 (27.9) Upward reclassification N= 186,106 (14.2) Downward reclassification N= 178,860 (13.7) 155,575 (29.9) 11,981 (3) 23,285 (5.8) 50,863 (24.9) 123,262 (65.8)

Upward reclassification analysis for LDL-C < 70 mg/dl N = 191,333 90 Upward Reclassification (%) 80 70 60 50 40 30 20 10 0 Triglyceride category Non-HDL-C! 100 mg/dl no. (%) N = 28,704 (15%) Non-HDL-C! 93 mg/dl no. (%) N = 46,840 (24.5%) Non-HDL-C! 100 mg/dl <100 mg/dl N=78,578 100-149 mg/dl N=51,892 6,123 (11.8) Non-HDL-C! 93 mg/dl 150-199 mg/dl N=27,757 6,085 (21.9) 13,934 (50.2) 200-399 mg/dl N=33,106 22,619 (68.3) 26,783 (80.9)

Upward reclassification analysis for LDL-C 70-99 mg/dl N = 376,323 Upward Reclassification (%) 90 80 70 60 50 40 30 20 10 0 Triglyceride category Non-HDL-C! 130 mg/dl no. (%) N = 43,230 (11.5%) Non-HDL-C! 125 mg/dl no. (%) N = 62,817 (16.7%) Non-HDL-C! 130 mg/dl <100 mg/dl N=165,324 100-149 mg/dl N=109,871 4,433 (4) Non-HDL-C! 125 mg/dl 150-199 mg/dl N=53,010 9,050 (17.1) 18,514 (34.9) 200-399 mg/dl N=48,118 34,180 (71) 39,870 (82.9)