| Literature DB >> 31581569 |
Toshiaki Nakajima1, Ikuko Shibasaki2, Tatsuya Sawaguchi3, Akiko Haruyama4, Hiroyuki Kaneda5, Takafumi Nakajima6, Takaaki Hasegawa7, Takuo Arikawa8, Syotaro Obi9, Masashi Sakuma10, Hironaga Ogawa11, Shigeru Toyoda12, Fumitaka Nakamura13, Shichiro Abe14, Hirotsugu Fukuda15, Teruo Inoue16.
Abstract
Frailty and sarcopenia increase the risk of complications and mortality when invasive treatment such as cardiac surgery is performed. Growth differentiation factor-15 (GDF-15) involves various pathophysiological conditions including renal dysfunction, heart failure and cachexia. We investigated the pathophysiological roles of preoperative GDF-15 levels in cardiovascular surgery patients. Preoperative skeletal muscle index (SMI) determined by bioelectrical impedance analysis, hand-grip strength, 4 m gait speed, and anterior thigh muscle thickness (TMth) measured by echocardiography were assessed in 72 patients (average age 69.9 years) who underwent cardiovascular surgery. The preoperative serum GDF-15 concentration was determined by enzyme-linked immunosorbent assay. Circulating GDF-15 level was correlated with age, brain natriuretic peptide, and estimated glomerular filtration rate (eGFR). It was also negatively correlated with SMI, hand-grip strength, and anterior TMth. In multivariate analysis, eGFR and anterior TMth were the independent determinants of GDF-15 concentration even after adjusting for age, sex, and body mass index. Alternatively, the GDF-15 level was an independent determinant of eGFR and anterior TMth. We concluded that preoperative GDF-15 levels reflect muscle wasting as well as renal dysfunction in preoperative cardiovascular surgery patients. GDF-15 may be a novel biomarker for identify high-risk patients with muscle wasting and renal dysfunction before cardiovascular surgery.Entities:
Keywords: GDF-15; biomarkers; cardiovascular surgery; chronic kidney disease; muscle wasting; operative risk; renal dysfunction; sarcopenia
Year: 2019 PMID: 31581569 PMCID: PMC6832285 DOI: 10.3390/jcm8101576
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.241
Patient Characteristics.
| Number | 72 |
| Male, Female | 42, 30 |
| Age, y | 69.9 ± 13.1 |
| BMI, kg/m2 | 24.3 ± 3.9 |
| Risk factors (percentage) | |
| Hypertension | 75 |
| Diabetes | 35 |
| Dyslipidemia | 46 |
| Smoking | 11 |
| Hemodialysis | 8 |
| NYHA classification | 2.2 ± 1.0 |
| Coronary artery disease (percentage) | |
| 0-vessel disease | 53 |
| 1-vessel disease | 11 |
| 2-vessel disease | 6 |
| 3-vessel disease | 30 |
| Cardiovascular surgery (percentage) | |
| CABG | 26 |
| AVR | 21 |
| Other valve replacement/repair | 17 |
| CABG combined with valve replacement/repair (AVR, MVP, TAP) | 8 |
| AVR combined with other valve (MVP, TAP, LAAC) or aortic diseases (TAR) | 11 |
| Aortic disease (TAR, TEVAR, et al.) | 7 |
| Others | 10 |
| Drugs (percentage) | |
| β-blockers | 49 |
| Ca-blockers | 38 |
| ACE-I/ARB | 58 |
| Diuretics | 49 |
| Statins | 53 |
| Oral antidiabetic drugs | 31 |
| Insulin | 8 |
The mean ± SD values are shown. BMI, body mass index; NYHA, New York Heart Association; CABG, coronary artery bypass grafting; AVR, aortic valve replacement; MVR, mitral valve replacement; MVP, mitral valve plasty; TAP, tricuspid annuloplasty; LAAC, left atrial appendage closure; TAR, total arch replacement; TEVAR, thoracic endovascular aortic repair; ACE-I, angiotensin converting enzyme inhibitors; ARB, angiotensin II receptor blockers; Oral anti-diabetic drugs included α-glucosidase inhibitors, sulfonylurea, biguanide, dipeptidyl peptidase-4 inhibitors, and sodium glucose cotransporter 2 inhibitors.
Sex differences in various parameters.
| Total ( | Male ( | Female ( | |
|---|---|---|---|
| Age, years | 69.9 (13.1) | 66.9 (14.4) | 73.7 (10.0) * |
| BMI, kg/m2 | 24.3 (3.9) | 24.9 (4.5) | 24.7 (5.5) |
| NYHA classification | 2.2 (1.0) | 2.3 (1.1) | 2.1 (0.9) |
| Gait speed, m/s | 0.93 (0.32) | 0.99 (0.34) | 0.86 (0.28) |
| Hand-grip strength, kgf | 22.8 (8.5) | 27.1 (7.9) | 16.5 (4.6) *** |
| Knee extension strength, kgf | 20.8 (9.5) | 24.4 (9.3) | 15.6 (7.1) *** |
| Body fat percentage, % | 32.3 (9.3) | 28.4 (7.8) | 37.6 (8.7) *** |
| Skeletal muscle mass index (SMI), kg/m2 | 6.5 (1.4) | 7.2 (1.3) | 5.4 (0.9) *** |
| Anterior thigh muscle thickness (TMth) (supine), cm | 2.28 (0.75) | 2.41 (0.80) | 2.1 (0.6) |
| Anterior thigh muscle thickness (TMth) (standing), cm | 3.47 (0.95) | 3.68 (0.97) | 3.2 (0.9) * |
| HbA1c, % | 6.2 (0.9) | 6.3 (1.0) | 6.0 (0.8) |
| BNP, pg/mL | 355 (570) | 399 (673) | 268 (345) |
| eGFR, ml/min/1.73 m2 | 58.2 (24.0) | 55.7 (26.6) | 63.4 (19.3) |
| Hb, g/dL | 12.2 (1.8) | 12.3 (1.9) | 11.9 (1.7) |
| HOMA-IR | 2.75 (4.20) | 3.46 (5.29) | 1.64 (1.29) |
| hsCRP, mg/L | 5.9 (12) | 7.4 (13.8) | 3.3 (7.9) |
| GDF-15, pg/mL | 1676 (1465) | 1928 (1655) | 1325 (1078) |
| TNFα, pg/mL | 3.5 (2.8) | 4.1 (2.9) | 2.6 (1.9) * |
| IGF-1, ng/mL | 74.4 (33.4) | 77.3 (36.5) | 70.4 (28.5) |
* p < 0.05. *** p < 0.001. Males vs. Females hsCRP, high sensitivity C-reactive protein; BNP, brain natriuretic peptide; eGFR, estimate glomerular filtration rate; HOMA-IR, Homeostasis model assessment of insulin resistance; GDF-15, growth differentiation factor-15; TNFα, tissue necrosis factor α; IGF-1, insulin growth factor-1.
Correlation matrix between various parameters and serum GDF-15, and TNFα, IGF-1 concentration.
| GDF-15 Males/Females | TNFα Males/Females | IGF-1 Males/Females | |
|---|---|---|---|
| Age | 0.436 (0.004) **/0.637 (<0.001) *** | 0.244 (0.120)/0.261 (0.164) | −0.319 (0.036) */−0.339 (0.066) |
| BMI | −0.143 (0.367)/−0.062 (0.745) | −0.263 (0.092)/−0.055 (0.772) | 0.047 (0.769)/0.194 (0.303) |
| HbA1C | −0.155 (0.340)/−0.229 (0.223) | −0.154 (0.342)/−0.127 (0.503) | 0.261 (0.104)/0.344 (0.063) |
| BNP | 0.427 (0.005) **/0.480 (0.007) ** | 0.465 (0.002) **/0.214 (0.257) | −0.059 (0.710)/−0.353 (0.055) |
| eGFR | −0.792 (<0.001) ***/−0.726 (<0.001) *** | −0.642 (<0.001) ***/−0.394 (0.031) * | 0.144 (0.363)/0.301 (0.106) |
| Hb | −0.560 (<0.001) ***/−0.370 (0.044) * | −0.566 (<0.001) ***/−0.065 (0.732) | 0.079 (0.617)/−0.006 (0.977) |
| Body fat percentage | −0.140 (0.403)/0.300 (0.128) | −0.146 (0.382)/0.135 (0.502) | −0.119 (0.479)/0.197 (0.326) |
| SMI | −0.392 (0.014) */−0.529 (0.005) ** | −0.368 (0.021) */−0.189 (0.346) | 0.313 (0.053)/0.153 (0.446) |
| Hand-grip | −0.456 (0.002) **/−0.656 (<0.001) *** | −0.393 (0.010) */−0.298 (0.117) | 0.240 (0.126)/0.244 (0.202) |
| Knee extension | −0.222 (0.169)/−0.541 (0.003) ** | −0.431 (0.005) **/−0.192 (0.329) | 0.140 (0.390)/0.061 (0.758) |
| Gait speed | −0.218 (0.165)/−0.558 (0.002) ** | −0.190 (0.229)/−0.336 (0.074) | 0.256 (0.102)/0.253 (0.186) |
| Anterior TMth (supine) | −0.636 (<0.001) ***/−0.391 (0.044) * | −0.509 (0.001) **/−0.200 (0.316) | 0.429 (0.005) **/0.057 (0.779) |
| Anterior TMth (standing) | −0.600 (<0.001) ***/−0.557 (0.003) ** | −0.434 (0.005) **/−0.267 (0.178) | 0.366 (0.020) */0.301 (0.127) |
| GDF-15 | -/- | 0.657 (<0.001) ***/0.434 (0.017) * | −0.203 (0.198)/−0.553 (0.002) ** |
| TNFα | 0.657 (<0.001) ***/0.434 (0.017) * | -/- | −0.233 (0.137)/−0.479 (0.007) ** |
* p < 0.05 ** p < 0.01 *** p < 0.001. SMI, skeletal muscle mass index; TMth, thigh muscle thickness.
Figure 1Correlations between clinical data (age, eGFR) and serum concentrations of GDF-15, TNF-α, and IGF-1. Relationships between laboratory data (age (a), eGFR (b)) and serum concentrations of GDF-15 (Aa,Ab), TNF-α (Ba,Bb) and IGF-1 (Ca,Cb) in males and females. ** p < 0.01, *** p < 0.001.
Figure 2Correlations between the physical data (anterior thigh muscle thickness, grip strength) and serum concentrations of GDF-15, TNF-α, and IGF-1. Relationships between the laboratory data (anterior thigh muscle thickness (TMth, supine) (a), grip strength (b) and serum concentrations of GDF-15 (Aa,Ab), TNF-α (Ba,Bb) and IGF-1 (Ca,Cb) in males * p < 0.05, ** p < 0.01, *** p < 0.001.
Multiple linear regression analysis between serum GDF-15 levels and the clinical parameters.
|
| ||||
| Dependent variable: log (GDF−15) | ||||
| Model 1 | Model 2 | Model 3 | Model 4 | |
| Independent variable. | β-value ( | β-value ( | β-value ( | β-value ( |
| eGFR | −0.650 (<0.001) *** | −0.655 (<0.001) *** | −0.613 (<0.001) *** | −0.597 (<0.001) *** |
| BNP (log) | −0.009 (0.929) | −0.011 (0.912) | −0.042 (0.649) | −0.040 (0.663) |
| Hb | −0.106 (0.257) | −0.110 (0.253) | −0.079 (0.372) | −0.084 (0.343) |
| SMI | 0.036 (0.722) | 0.031 (0.771) | −0.171 (0.139) | −0.196 (0.098) |
| Hand−grip strength | 0.106 (0.312) | 0.323 (0.104) | −0.105 (0.367) | −0.059 (0.632) |
| Anterior TMth (supine) | −0.358 (0.001) ** | −0.362 (0.001) ** | −0.233 (0.033) * | −0.272 (0.019) * |
|
| ||||
| Dependent variable: anterior thigh muscle thickness (supine) | ||||
| Model 1 | Model 2 | Model 3 | Model 4 | |
| Independent variable | β-value ( | β-value ( | β-value ( | β-value ( |
| GDF−15 (log) | −0.401 (0.005) ** | −0.311 (0.024) * | −0.384 (0.007) ** | −0.390 (0.004) ** |
| TNFα (log) | −0.007 (0.955) | −0.054 (0.671) | −0.068 (0.584) | −0.054 (0.644) |
| IGF−1 | 0.256 (0.031) * | 0.094 (0.456) | 0.071 (0.656) | 0.078 (0.506) |
|
| ||||
| Dependent variable: eGFR | ||||
| Model 1 | Model 2 | Model 3 | Model 4 | |
| Independent variable | β-value ( | β-value ( | β-value ( | β-value ( |
| BNP (log) | −0.164 (0.070) | −0.149 (0.106) | −0.149 (0.113) | −0.170 (0.070) |
| hsCRP (log) | −0.070 (0.377) | −0.094 (0.262) | −0.097 (0.257) | −0.085 (0.999) |
| Hb | 0.035 (0.685) | 0.005 (0.958) | 0.002 (0.984) | 0.011 (0.657) |
| GDF−15 (log) | −0.583 (<0.001) *** | −0.571 (<0.001) *** | −0.577 (<0.001) *** | −0.565 (<0.001) *** |
| TNFα (log) | −0.177 (0.069) | −0.196 (0.050) | −0.198 (0.050) | −0.197 (0.050) |
Model 1, unadjusted; Model 2, adjusted by age; Model 3, adjusted by age and sex; Model 4, adjusted by age, sex, and BMI.
Figure 3ROC curves to identify the optimal cut-off level of GDF-15, TNFα, and Hb for detecting eGFR < 60. In the ROC curves shown, different cut-off values of GDF-15, and TNFα, and Hb were used to predict eGFR < 60, with true positives plotted on the vertical axis (sensitivity) and Figure 1. plotted on the horizontal axis.
Differences in clinical data between the patients with and without sarcopenia.
| Male | Female | |||
|---|---|---|---|---|
| Sarcopenia (−) | Sarcopenia (+) | Sarcopenia (−) | Sarcopenia (+) | |
| Number | 28 | 11 | 14 | 13 |
| Age (years) | 63.4 (14.2) | 75.6 (10.8) *** | 68.9 (10.5) | 76.2 (7.3) * |
| BMI (kg/m2) | 26.0 (4.8) | 22.6 (3.0) * | 24.9 (3.1) | 25.9 (7.3) |
| Physical capacity | ||||
| Gait speed (m/s) | 1.08 (0.34) | 0.77 (0.28) * | 1.01 (0.17) | 0.73 (0.32) * |
| Grip strength (kgf) | 30.0 (7.4) | 20.2 (4.4) *** | 20.1 (3.1) | 13.9 (3.5) *** |
| Knee extension (kgf) | 26.9 (8.4) | 17.5 (7.3) ** | 19.2 (7.5) | 13.6 (4.8)* |
| BIA findings | ||||
| Body fat percentage (%) | 28.8 (7.4) | 27.9 (8.9) | 35.7 (6.6) | 39.8 (10.3) |
| Skeletal muscle mass index (SMI) (kg/m2) | 7.68 (1.15) | 5.90 (0.53) *** | 6.05 (0.53) | 4.74 (0.63) *** |
| Muscle thickness | ||||
| Anterior TMth (supine) (cm) | 2.64 (0.68) | 1.65 (0.53) *** | 2.45 (0.68) | 1.89 (0.48) * |
| Anterior TMth (standing) (cm) | 3.98 (0.88) | 2.78 (0.46) *** | 3.70 (0.74) | 2.77 (0.79) ** |
| HbA1c, % | 6.3 (0.9) | 6.4 (1.3) | 6.12 (0.98) | 5.97 (0.60) |
| BNP, pg/mL | 209 (285) | 646 (722) ** | 162 (250) | 366 (427) * |
| eGFR, ml/min/1.73 m2 | 59.7 (26.4) | 47.9 (26.1) | 70.6 (14.4) | 56.1 (22.1) |
| Hb, g/dL | 13.0 (1.6) | 11.0 (1.7) | 12.5 (1.7) | 11.5 (1.6) |
| hsCRP, mg/L | 7.1 (12.7) | 9.9 (18.5) | 4.5 (11.3) | 2.0 (2.3) |
| GDF-15, pg/mL | 1483 (1125) | 3053 (2346) * | 891 (700) | 1625 (1302) * |
| TNFα, pg/mL | 3.06 (1.95) | 6.07 (3.27) ** | 2.23 (2.10) | 2.92 (1.66) |
| IGF-1, ng/mL | 84.1 (40.0) | 62.7 (25.6) | 74.7 (23.6) | 70.6 (34.6) |
* p < 0.05. ** p < 0.01***. p < 0.001. Males vs. Females.