| Literature DB >> 26928275 |
Jens Reiss1, Bernhard Iglseder2, Martina Kreutzer3, Ingrid Weilbuchner4, Wolfgang Treschnitzer5, Helmut Kässmann6, Christian Pirich7, Raphael Reiter8.
Abstract
BACKGROUND: Sarcopenia is a common geriatric syndrome associated with serious adverse health outcomes. The European Working Group on Sarcopenia in Older People (EWGSOP) suggests different methods for case finding for sarcopenia. However, data comparing the different methodological options are scarce for geriatric inpatients.Entities:
Mesh:
Year: 2016 PMID: 26928275 PMCID: PMC4772647 DOI: 10.1186/s12877-016-0228-z
Source DB: PubMed Journal: BMC Geriatr ISSN: 1471-2318 Impact factor: 3.921
Clinical characteristics of study participants
| Total, | Female, | Male, |
| |
|---|---|---|---|---|
| Number of participants | 60 (100) | 42 (70) | 18 (30) | |
| Age (y, mean ± SD) | 81.6 ± 5.28 | 80.4 ± 5.29 | 84.5 ± 4.08 |
|
| Community dwelling | 55 (92) | 37 (88) | 18 (100) | n.s. |
| Malnutrition (MNA <17) | 26 (43) | 21 (50) | 5 (28) | n.s. |
| Obesity (BMI > 30 kg/m2) | 14 (23) | 10 (24) | 4 (22) | n.s. |
| Morbidity: | ||||
| Coronary heart disease | 18 (30) | 9 (21) | 9 (50) |
|
| Chronic heart failure | 16 (27) | 9 (21) | 7 (39) | n.s. |
| Cerebrovascular diseasea | 20 (33) | 11 (26) | 9 (50) | n.s. |
| Art. Hypertension | 49 (82) | 35 (83) | 14 (78) | n.s. |
| COPD | 6 (10) | 3 (7) | 3 (17) | n.s. |
| Diabetes | 16 (27) | 11 (26) | 5 (28) | n.s. |
| CKD (≥ stage 3) | 22 (37) | 12 (29) | 10 (56) | n.s. |
| Cancerb | 10 (17) | 6 (14) | 4 (22) | n.s. |
| Mild or moderate dementia | 7 (12) | 3 (7) | 4 (22) | n.s. |
| Comorbidity (≥2 of listed diseases) | 46 (77) | 30 (71) | 16 (89) | n.s. |
| Comorbidity (≥3 of listed diseases) | 35 (58) | 20 (48) | 15 (83) |
|
| Polypharmacy (≥5 drugs taken) | 48 (80) | 33 (78) | 15 (83) | n.s. |
| Dependency in ADL (Barthel <70) | 27 (45) | 19 (45) | 8 (44) | n.s. |
| Gait speed [m/s] (mean ± SD) | 0.86 ± 0.37 | 0.77 ± 0.34 | 1.05 ± 0.36 |
|
| Grip strength [kg] (mean ± SD) | 24.8 ± 9.90 | 20.9 ± 7.36 | 33.6 ± 9.45 |
|
SD standard deviation, MNA Mini Nutritional Assessment, BMI Body Mass Index, CKD chronic kidney disease (stage 3 referring to a GFR < 60 ml/min/1.73 m2), ADL Activities of Daily Living
aincludes also patients with a history of transient ischaemic attacks; b: includes patients with a history of malignancy independent of current evidence of active disease. cfor significance of differences between women and men, n.s., not significant (p > 0.05)
Fig. 1Correlation of DXA- and BIA-derived muscle mass measurements. a Linear regression of DXA-derived appendicular skeletal muscle mass (ASMMDXA) vs. BIA-derived appendicular skeletal muscle mass (ASMMBIA) (Pearson correl. coeff. = 0.9551). b Bland Altman plot of ASMMDXA vs. ASMMBIA
Agreement between the DXA- and BIA-based approaches to detect reduced muscle mass (a) and diagnose sarcopenia (b)
| a | Aagreement % (CI) | Cohens’ κ-coeff. (CI) |
| DXA vs. BIA (threshold Janssen et al.) | 73 % (61.7–83.3) | 0.437 (0.218–0.653) |
| DXA vs. BIA (threshold Chien et al.) | 80 % (68.3–90.0) | 0.492 (0.219–0.734) |
| b | Agreement % (CI) | Cohens’ κ-coeff. (CI) |
| DXA vs. BIA (threshold Janssen et al.) | 79 % (65.8–92.1) | 0.579 (0.309–0.829) |
| DXA vs. BIA (threshold Chien et al.) | 84 % (71.1–94.7) | 0.636 (0.321–0.883) |
Accuracy of BIA in reference to DXA in identifying patients with reduced muscle mass (a) and sarcopenia (b)
| a | Patients with reduced muscle mass ( | ||||||||
| True pos. ( | False pos. ( | false neg. ( | True neg. ( | PPV | NPV | Sens. | Spec. | Acc. | |
| DXA | 18 | - | - | 42 | |||||
| BIA (threshold Janssen et al.) | 14 | 12 | 4 | 30 | 54 % | 88 % | 77 % | 71 % | 73 % |
| BIA (threshold Chien et al.) | 10 | 4 | 8 | 38 | 71 % | 83 % | 55 % | 90 % | 80 % |
| b | Patients with sarcopenia ( | ||||||||
| True pos. ( | False pos. ( | False neg. ( | True neg ( | PPV | NPV | Sens. | Spec. | Acc. | |
| DXA | 13 | - | - | 25 | |||||
| BIA (threshold Janssen et al.) | 12 | 7 | 1 | 18 | 63 % | 94 % | 92 % | 72 % | 79 % |
| BIA (threshold Chien et al.) | 9 | 2 | 4 | 23 | 82 % | 85 % | 69 % | 92 % | 84 % |
PPV positive predictive value, NPV negative predictive value, Sens sensitivity, Spec specificity, Acc accuracy
Fig. 2Sarcopenia case finding results following the EWGSOP algorithm by using either DXA or BIA. For BIA 2 different thresholds for reduced muscle mass were used (denoted as “Janss.” and “Chien”). Although BIA, using the threshold for reduced muscle mass of Chien et al., at first glance leads to a similar result as DXA (11 vs. 13 patients being sarcopenic), it should be noted that actually 2 out of the 11 patients are misclassified, i.e. false positive results, if DXA is taken as reference