| Literature DB >> 34838008 |
Maureen Sampson1, Rami A Ballout2, Daniel Soffer3, Anna Wolska2, Sierra Wilson2, Jeff Meeusen4, Leslie J Donato4, Erica Fatica4, James D Otvos5, Eliot A Brinton6, Robert S Rosenson7, Peter Wilson8, Marcelo Amar2, Robert Shamburek2, Sotirios K Karathanasis2, Alan T Remaley9.
Abstract
BACKGROUND: Dyslipoproteinemias can be classified by their distinct lipoprotein patterns, which helps determine atherosclerotic cardiovascular disease (ASCVD) risk and directs lipid management but this has required advanced laboratory testing.Entities:
Keywords: Cardiovascular disease; Cholesterol; Genetics; LDL; Lipids; Lipoproteins
Mesh:
Substances:
Year: 2021 PMID: 34838008 PMCID: PMC8627634 DOI: 10.1186/s12944-021-01585-8
Source DB: PubMed Journal: Lipids Health Dis ISSN: 1476-511X Impact factor: 3.876
Fig. 1Diagram of new lipoprotein phenotyping classification system. Solid lines indicate various nonHDL-C and TG cut-points used to define various lipoprotein phenotypes (Type I-VI dyslipidemias, and the Normolipidemic subtypes (High (H), Moderate (M) and Low (L)). Phenotypes are color coded as indicated
Fig. 2Lipoprotein phenotyping of subjects by new classification system. Samples (N = 11,365) from patients seen at the NIH, who were categorized into phenotypes based on NonHDL-C and TG rules (A) or as NonHDL-C and natural log TG (B) or as natural log NonHDL-C and natural log TG (C). NonHDL-C and TG were converted into percentiles and plotted as the percentile NonHDL-C versus percentile TG (D). Each point represents an individual sample. Phenotypes are color coded as indicated. Dotted lines in Panel A indicate cholesterol-to-TG ratio of indicated purified lipoproteins (LDL-C = 4, VLDL-C = 0.4, Chylos = 0.04)
Frequency of phenotypes in NIH and NHANES populations and mean lipid values for NIH population
| Phenotypes | NIH ( | NHANES ( | TC | TG | HDL-C | LDL-C4 | NonHDL-C | ApoB | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| NL | 1600 (14.1%)1 | 1004 (7.71%)1 | 126(112–139)2 | G3 | 84 (57–110) | H | 53 (40–65) | B | 56 (49–64) | G | 73 (65–81) | G | 63 (55–70) | G |
| NM | 7455 (65.6%) | 8742 (66.8%) | 180 (160–201) | E | 91 (66–117) | G | 56 (45–67) | A | 106 (89–123) | E | 124 (106–143) | E | 94 (82–106) | E |
| NH | 370 (3.3%) | 703 (5.4%) | 251 (239–262) | C | 104 (80–128) | F | 58 (49–68) | A | 172 (165–178) | C | 192 (185–199) | C | 137 (129–144) | C |
| I | 20 (0.2%) | 0 (0%) | 121 (113–128) | FG | 577 (535–618) | B | 20 (12–29) | F | −15 (−26--4) | I | 100 (93–107) | F | 80 (68–92) | F |
| IIa | 166 (1.5%) | 205 (1.6%) | 313 (280–346) | A | 108 (76–139) | F | 56 (46–66) | AB | 235 (206–265) | A | 257 (230–283) | A | 176 (158–194) | A |
| IIb | 153 (1.3%) | 274 (2.1%) | 312 (279–345) | A | 292 (230–354) | C | 47 (38–56) | C | 206 (181–231) | B | 265 (236–293) | A | 181 (162–200) | A |
| IVa | 483 (4.2%) | 391 (3%) | 141 (123–159) | F | 245 (203–286) | E | 36 (27–45) | E | 56 (39–72) | G | 105 (91–119) | F | 80 (68–92) | F |
| IVb | 940 (8.3%) | 1642 (12.5%) | 206 (187–225) | D | 260 (208–312) | D | 39 (32–46) | D | 115 (97–132) | D | 167 (150–183) | D | 120 (107–133) | D |
| V | 144 (1.3%) | 123 (0.9%) | 261 (209–314) | B | 686 (580–792) | A | 32 (24–40) | EF | 92 (43–142) | F | 229 (182–277) | B | 144 (114–173) | B |
| VI | 34 (0.3%) | 2 (0%) | 50 (43–58) | H | 16 (13–19) | I | 28 (24–32) | EF | 19 (15–23) | H | 22 (18–25) | H | 29 (25–34) | H |
Footnotes 1Numbers in parenthesis indicate % total population
2Numbers in parenthesis indicate inter-quartile range
3Capital letters indicate differences in group means as determined by ANOVA
4LDL-C was calculated by Friedewald equations, which can lead to erroneously negative values for high TG samples
Fig. 3Classification of Type III phenotype by apoB-based decision rules. Regression analysis of NonHDL-C versus apoB for Type III patients (open white circles: dotted line) versus remaining phenotypes (color coded faint circles: solid line) for NIH samples (N = 11,365) (A). Type III patients identified by the NonHDL-C/apo B rule plus other Sniderman rules for Type III were (open white circles) versus other phenotypes (color coded faint circles) were plotted on graph of NonHDL-C versus TG (B). Type III patients identified by NonHDL-C/apo B rule plus other Sniderman rules for Type III (open white circles) were plotted onto percentile plot containing other phenotypes (color coded faint circles) (C)
Fig. 4NMR lipoprotein particle parameters for LDL. Samples in NIH database (N = 11,365) were analyzed by NMR for (A) Total LDL-P, (B) Large-medium LDL-P, (C) small LDL-P, and (D) % small LDL-P. Capital letters indicate differences in group means as determined by ANOVA
Fig. 5Contour plots for LDL related parameters. Samples in NIH database (N = 11,365) were analyzed for the following LDL related parameters and plotted as a contour plot: (A) LDL-C, (B) Large-medium LDL-P, (C) small LDL-P, and (D) apoB
Fig. 6NMR lipoprotein particle parameters for TRL. Samples in NIH database (N = 11,365) were analyzed by NMR for (A) total TRL-P, (B) Very large-large-medium TRL, (C) small TRL, and (D) IDL. Capital letters indicate differences in group means as determined by ANOVA
Comparison of new lipoprotein phenotype classification method with gel-lipid method
| New | Gel-Lipid Phenotypes | TG | TG | TG | NonHDL-C | NonHDL-C | NonHDL-C | BQ-LDL-C | BQ-LDL-C | BQ-LDL-C | |||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| N | % Total | Concordance | Mean | Min | Max | Mean | Min | Max | Mean | Min | Max | ||
| 268 | 94 | 90 ± 32 | 30 | 174 | 77 ± 9 | 49 | 98 | 65 ± 8 | 32 | 82 | |||
| Normal | 252 | 86 ± 26 | 30 | 149 | 76 ± 9 | 49 | 94 | 65 ± 8 | 40 | 82 | |||
| Mild Type IV Hyperlipoproteinemia | 16 | 6 | 168 ± 5 | 160 | 174 | 83 ± 13 | 56 | 98 | 60 ± 12 | 32 | 76 | ||
| 1624 | 94 | 89 ± 30 | 26 | 174 | 117 ± 20 | 79 | 190 | 104 ± 19 | 67 | 169 | |||
| Normal | 1521 | 85 ± 27 | 26 | 149 | 114 ± 15 | 79 | 152 | 101 ± 14 | 67 | 129 | |||
| Mild Type IV Hyperlipoproteinemia | 26 | 1.6 | 169 ± 5 | 154 | 174 | 127 ± 18 | 99 | 159 | 101 ± 18 | 67 | 127 | ||
| Mild Type IIb Hyperlipoproteinemia | 11 | 0.7 | 170 ± 4 | 162 | 174 | 165 ± 9 | 154 | 180 | 141 ± 9 | 131 | 157 | ||
| Mild Type IIa Hyperlipoproteinemia | 66 | 4.1 | 116 ± 34 | 53 | 173 | 177 ± 7 | 163 | 190 | 163 ± 2 | 160 | 169 | ||
| 702 | 93 | 113 ± 32 | 34 | 174 | 194 ± 10 | 170 | 222 | 175 ± 9 | 154 | 199 | |||
| Mild Type IIa Hyperlipoproteinemia | 655 | 112 ± 31 | 34 | 174 | 193 ± 10 | 170 | 222 | 174 ± 8 | 160 | 189 | |||
| Type IIa Hyperlipoproteinemia | 45 | 6.4 | 122 ± 32 | 62 | 173 | 208 ± 7 | 195 | 222 | 193 ± 3 | 190 | 199 | ||
| Mild Type IIb Hyperlipoproteinemia | 2 | 0.3 | 173 ± 1 | 172 | 174 | 203 ± 5 | 199 | 206 | 164 ± 13 | 154 | 173 | ||
| 1 | 0 | 614 | 614 | 614 | 101 | 101 | 101 | 40 | 40 | 40 | |||
| Type V Hyperlipoproteinemia | 1 | 614 | 614 | 614 | 101 | 101 | 101 | 40 | 40 | 40 | |||
| 530 | 100 | 113 ± 33 | 32 | 174 | 246 ± 44 | 198 | 562 | 225 ± 43 | 176 | 540 | |||
| Type IIa Hyperlipoproteinemia | 530 | 113 ± 33 | 32 | 174 | 246 ± 44 | 198 | 562 | 225 ± 43 | 176 | 540 | |||
| 416 | 100 | 282 ± 87 | 175 | 494 | 261 ± 47 | 220 | 601 | 204 ± 49 | 83 | 593 | |||
| Type IIb Hyperlipoproteinemia | 276 | 296 ± 77 | 181 | 492 | 259 ± 42 | 220 | 499 | 204 ± 41 | 134 | 429 | |||
| Type IIa Hyperlipoproteinemia | 121 | 205 ± 34 | 175 | 389 | 260 ± 52 | 220 | 601 | 224 ± 55 | 172 | 593 | |||
| Type IV Hyperlipoproteinemia | 19 | 436 ± 41 | 356 | 494 | 236 ± 10 | 221 | 258 | 143 ± 13 | 113 | 163 | |||
| 354 | 99 | 227 ± 51 | 175 | 484 | 110 ± 16 | 39 | 129 | 77 ± 17 | 17 | 108 | |||
| Mild Type IV Hyperlipoproteinemia | 353 | 226 ± 50 | 175 | 484 | 110 ± 16 | 39 | 129 | 77 ± 17 | 17 | 108 | |||
| Type V Hyperlipoproteinemia | 1 | 0.3 | 382 | 382 | 382 | 82 | 82 | 82 | 36 | 36 | 36 | ||
| 1281 | 100 | 260 ± 72 | 175 | 499 | 176 ± 25 | 130 | 219 | 132 ± 27 | 53 | 197 | |||
| Type IV Hyperlipoproteinemia | 629 | 278 ± 81 | 175 | 499 | 157 ± 20 | 130 | 218 | 110 ± 14 | 53 | 148 | |||
| Mild Type IIb Hyperlipoproteinemia | 558 | 246 ± 58 | 175 | 493 | 191 ± 16 | 154 | 219 | 150 ± 14 | 130 | 190 | |||
| Mild Type IIa Hyperlipoproteinemia | 91 | 206 ± 34 | 175 | 319 | 204 ± 9 | 183 | 219 | 172 ± 8 | 160 | 189 | |||
| Type IIa Hyperlipoproteinemia | 3 | 0.2 | 179 ± 3 | 177 | 183 | 216 ± 3 | 213 | 219 | 193 ± 4 | 190 | 197 | ||
| 328 | 98 | 1791 ± 1560 | 502 | 11,350 | 332 ± 170 | 115 | 1128 | 91 ± 54 | 15 | 317 | |||
| Type V Hyperlipoproteinemia | 218 | 2424 ± 1622 | 588 | 11,350 | 349 ± 188 | 115 | 1040 | 65 ± 31 | 16 | 236 | |||
| Type IV Hyperlipoproteinemia | 84 | 719 ± 279 | 502 | 1829 | 244 ± 73 | 125 | 531 | 102 ± 32 | 30 | 195 | |||
| Type IIb Hyperlipoproteinemia | 21 | 652 ± 171 | 503 | 1105 | 319 ± 66 | 224 | 491 | 206 ± 49 | 158 | 317 | |||
| Type I Hyperlipoproteinemia | 5 | 1.5 | 4545 ± 2459 | 2745 | 8495 | 456 ± 397 | 192 | 1128 | 72 ± 62 | 15 | 160 |
Association of new lipoprotein phenotypes with ASCVD risk factors in MESA
| NL | 246 | 63 (54–72) | A | 28 (23.9–32.1) | C | 124 (109–140) | D | 3.8 (1.8–5.8) | BC | ||
| NM | 4632 | 62 (53–71) | A | 28 (24.7–31.4) | C | 126 (112–141) | CD | 3.7 (2.0–5.3) | C | ||
| NH | 424 | 62 (54–69) | ABC | 28.5 (25.5–31.5) | BC | 127 (113–140) | BCD | 3.3 (1.7–4.9) | C | ||
| IIa | 91 | 62 (53–70) | ABC | 27.7 (24.9–30.6) | C | 126 (111–141) | ABCD | 3.4 (1.6–5.2) | BC | ||
| IIb | 177 | 62 (54–69) | ABC | 29.4 (26.5–32.3) | AB | 129 (115–143) | ABC | 3.7 (2.1–5.3) | BC | ||
| IVa | 144 | 62 (54–70) | AB | 30 (27.2–32.9) | A | 132 (117–146) | A | 5.2 (2.1–8.4) | A | ||
| IVb | 1040 | 61 (53–69) | BC | 29.4 (26.3–32.5) | A | 129 (115–142) | AB | 4.2 (2.4–5.9) | BC | ||
| V | 34 | 58 (53–63) | C | 29.1 (25.8–32.4) | ABC | 131 (116–147) | ABCD | 4 (1.6–6.3) | ABC | ||
| NL | 246 | 41.1% | A | 31.7% | BC | 49.6% | A | 31.7% | D | 19.9% | AB |
| NM | 4632 | 31.0% | B | 23.1% | D | 36.4% | D | 24.7% | E | 13.5% | C |
| NH | 424 | 31.1% | B | 23.6% | D | 29.0% | E | 26.4% | DE | 15.8% | BC |
| IIa | 91 | 39.6% | AB | 28.6% | CD | 23.1% | E | 25.3% | DE | 15.4% | BC |
| IIb | 177 | 11.3% | CD | 39.0% | BC | 40.1% | BCD | 76.3% | BC | 16.9% | BC |
| IVa | 144 | 20.8% | C | 40.3% | B | 49.3% | AB | 84.7% | AB | 20.1% | AB |
| IVb | 1040 | 11.3% | D | 36.1% | BC | 40.2% | C | 76.8% | C | 17.1% | B |
| V | 34 | 14.7% | CD | 67.6% | A | 41.2% | ABCDE | 94.1% | A | 32.4% | A |
| NL | 246 | 46.3% | A | ||||||||
| NM | 4632 | 46.5% | A | ||||||||
| NH | 424 | 46.9% | A | ||||||||
| IIa | 91 | 42.9% | A | ||||||||
| IIb | 177 | 46.9% | A | ||||||||
| IVa | 144 | 48.6% | A | ||||||||
| IVb | 1040 | 50.9% | A | ||||||||
| V | 34 | 52.9% | A |
Footnote: *Capital letters indicate differences in group means as determined by ANOVA. Numbers in parenthesis indicate interquartile ranges
Fig. 7Survival curve analysis by lipoprotein phenotypes. Survival curves in ARIC (N = 14,742) for all ASCVD events were calculated for the indicated lipoprotein phenotypes (A and B). For ARIC only baseline lipid results from the first study visit were used for analysis and ASCVD was defined as including the following: fatal and non-fatal myocardial infarction, revascularization, stroke and heart failure
Lipoprotein Phenotypes: Clinical findings and impact on management of patients (ref. cited in table [37–39])
| Lipoprotein | Possible Clinical Findings | Dietary and Pharmacological Treatments | Possible Referrals | Additional Lab Tests to consider | Primary Causes ^ | Possible Secondary Causes |
|---|---|---|---|---|---|---|
- Acute Pancreatitis - Eruptive Xanthomas - Lipemia Retinalis - Mental Status Changes | Very low-fat diet, Fibrates, Fish Oil, Niacin | Nutritionist. Consider Lipidologist for refractory cases. | LPL activity assay. Consider apoC-II mutation testing after excluding secondary causes of TG > 885 mg/dL in pediatric populations [ | (Autosomal Recessive: LPL, APOC2, GPIHBP1, APOA5, LMF1) | - Type 2 Diabetes - Obesity - Hypothyroidism - Oral Estrogens - Pregnancy - Polycystic Ovarian Syndrome - Alcohol Intake - Chronic Kidney Disease - Non-alcoholic Fatty Liver Disease - Systemic Lupus Erythematosus - Monoclonal Gammopathies - Antiretroviral Therapy - Beta-blockers - Retinoic Acids - Anti-GPIHBP1 antibodies - Lipodystrophy | |
- Xanthelasmas - Tuberous Xanthomas - Tendinous Xanthomas - Corneal Arcus | Statins (first line), Ezetimibe, Bile acid resins, PCSK9 inhibitors | Lipidologist, especially for homozygous FH or statin-refractory cases | Consider genetic testing after excluding secondary causes for LDL-C exceeding: a) 190 mg/dL for age < 20 b) 220 mg/for age 20–29 c) 250 mg/dL for age > 30 [54,55]. | (Autosomal Dominant: LDLR, APOB, PCSK9) (Autosomal Recessive: LDLRAP1) | - Nephrotic Syndrome - Hypothyroidism - Anabolic Steroids - Cholestatic Liver Disease - Retinoic Acids - Atypical Antipsychotics | |
| No specific signs or symptoms | Statins, Fibrates, Fish Oils, Niacin | Lipidologist for statin-refractory cases | ApoB measurement, Advanced lipid testing (eg: NMR) | Unidentified | - Type 2 Diabetes - Obesity - Nephrotic Syndrome - Cholestatic Liver Disease - Wolman’s disease - Polycystic Ovarian Syndrome - Systemic Lupus Erythematosus - HIV infection - Antiretroviral Therapy - Glucocorticoids - Atypical Antipsychotics - Pregnancy - Retinoic Acids | |
↑↑ TG↑↑ NonHDL-C | - Palmar xanthomas (pathognomonic) - Tuberous xanthomas - Peripheral Vascular Disease | Statins, Fibrates, Fish Oils, Niacin | Lipidologist for statin-refractory cases | ApoB measurement, ApoE isoform assay, Beta-quantitation, Lipoprotein Electrophoresis | (Autosomal Recessive of variable penetrance for APOE-e2 variant, but Autosomal Dominant for rare APOE mutations) | - Type 2 Diabetes - Obesity - Alcohol Intake - Hypothyroidism - Glucocorticoids - Chronic Kidney Disease - Menopause - Monoclonal Gammopathies - Systemic Lupus Erythematosus |
- Insulin resistance - Metabolic Syndrome - Obesity | Statins, Fibrates, Fish Oils, Niacin | Generally none. | ApoB measurement, Advanced lipid testing (eg: NMR) | Unidentified | - Type 2 Diabetes - Obesity - Alcohol Intake - Hypothyroidism - Glucocorticoids - Chronic Kidney Disease - Oral Estrogens | |
- Acute Pancreatitis - Eruptive Xanthomas - Lipemia Retinalis - Mental Status Changes - Insulin resistance - Metabolic Syndrome - Obesity | Very low-fat diet, Fibrates, Fish Oils, Niacin | Lipidologist and Nutritionist | ApoB measurement, Advanced lipid testing (eg: NMR) | Unidentified | - Type 2 Diabetes - Obesity - Alcohol Intake - Hypothyroidism - Glucocorticoids - Chronic Kidney Disease - Oral Estrogens | |
- Steatorrhea - Hepatic steatosis - Failure to thrive - Spinocerebellar Ataxia - Night Blindness - Retinitis Pigmentosa - Bleeding tendency - Acanthocytes | Low-fat diet, Megadose supplementations of Vitamins A and E +/− Vitamin K | Lipidologist, Nutritionist, Ophthalmologist, Neurologist | ApoB measurement, Plasma Vitamin A and E levels, PT/INR | - Chronic Liver Disease - Malnutrition - Fat malabsorption syndromes |
* TG Triglycerides; HDL-C High Density Lipoprotein-Cholesterol; LDL-C Low Density Lipoprotein-Cholesterol; FH Familial Hypercholesterolemia; HIV Human Immunodeficiency Virus
^ LPL Lipoprotein Lipase; APOC2 apolipoprotein C2; GPIHBP1 Glycosylphosphatidylinositol Anchored High Density Lipoprotein Binding Protein 1; APOA5 apolipoprotein A5; LMF1 Lipase Maturation Factor 1; LDLR Low Density Lipoprotein Receptor; APOB = apolipoprotein B; PCSK9 Proprotein convertase subtilisin/kexin type 9; LDLRAP1 Low Density Lipoprotein Receptor Adaptor Protein 1; APOE apolipoprotein E; MTP Microsomal transfer protein