| Literature DB >> 32153851 |
Kakoli Rani Bhowmik1, Sumonkanti Das1.
Abstract
BACKGROUND: Logistic regression analysis is widely used to explore the determinants of child malnutrition status mainly for nominal response variable and non-linear relationship of interval-scale anthropometric measure with nominal-scale predictors. Multiple classification analysis relaxes the linearity assumption and additionally prioritizes the predictors. Main objective of the study is to show how does multiple classification analysis perform like linear and logistic regression analyses for exploring and ranking the determinants of child malnutrition.Entities:
Keywords: Height-for-age Z-score; Linear regression; Logistic regression; Stunting
Year: 2017 PMID: 32153851 PMCID: PMC7050713 DOI: 10.1186/s40795-017-0194-7
Source DB: PubMed Journal: BMC Nutr ISSN: 2055-0928
Estimated regression coefficients of linear regression model (LM) for Height-for-Age Z-score (HAZ), and adjusted mean predicted (APM) HAZ calculated from interval-scale multiple classification analysis (IS-MCA) model by different socio-demographic factors, BDHS 2011
| Background Characteristics | No. of children | Estimated regression coefficient of LM | Mean predicted HAZ from IS-MCA |
|---|---|---|---|
| Β | APM | ||
|
| |||
| <12 | 1484 | −0.9442 | |
| 12–23 | 1443 | −0.938*** | −1.8826 |
| 24–35 | 1441 | −0.940*** | −1.8843 |
| 36–47 | 1679 | −0.903*** | −1.8470 |
| 48–59 | 1600 | −0.808*** | −1.7527 |
|
| |||
| Large | 1086 | −1.4872 | |
| Average | 5262 | −0.147** | −1.6345 |
| Small | 1299 | −0.455*** | −1.9421 |
|
| |||
| <24 | 587 | −0.268*** | −1.8869 |
| 24–47 | 1879 | −0.108** | −1.7265 |
| 48+ | 5181 | −1.6187 | |
|
| |||
| Illiterate | 1449 | −0.484*** | −1.7726 |
| Primary | 2330 | −0.462*** | −1.7503 |
| Secondary | 3260 | −0.340*** | −1.6284 |
| Higher | 608 | −1.2881 | |
|
| |||
| <18.5 | 2116 | −0.142*** | −1.7922 |
| 18.5–24.99 | 4576 | −1.6504 | |
| 25+ | 955 | 0.191*** | −1.4597 |
|
| |||
| Poorest | 1682 | −2.0438 | |
| Poorer | 1489 | −0.838*** | −1.7987 |
| Middle | 1456 | −0.593*** | −1.6967 |
| Richer | 1493 | −0.491*** | −1.5476 |
| Richest | 1527 | −0.342*** | −1.2060 |
|
| |||
| Small (<4) | 761 | −0.086 | −1.7057 |
| Middle (4-6) | 4248 | −1.6192 | |
| Large (7+) | 2638 | −0.110** | −1.7294 |
|
| |||
| Urban | 2342 | −1.7196 | |
| Rural | 5305 | 0.077** | −1.6421 |
|
| |||
| Barisal | 837 | −1.6966 | |
| Chittagong | 1516 | 0.012 | −1.6844 |
| Dhaka | 1272 | 0.003 | −1.6932 |
| Khulna | 894 | 0.109 | −1.5878 |
| Rajshahi | 0.261*** | −1.4357 | |
| Rangpur | 916 | 0.003 | −1.6937 |
| Sylhet | 993 | −0.104 | −1.8004 |
| Goodness-of-fit |
|
| |
| R2 value | 0.170 | 0.170 | |
*** P < 0.001; ** P < 0.01; * <0.05
Estimated regression coefficients of binary logistic regression model (BlogM) for child malnutrition status defined as height-for-age Z-score less than −2.00, the corresponding odds ratios (ORs), and adjusted predicted proportion (APP) of malnourished children from nominal-scale multiple classification analysis (NS-MCA) model, BDHS 2011
| Background Characteristics | Estimated regression coefficient of BlogM and OR | Predicted proportion from NS-MCA | |
|---|---|---|---|
| Β | OR | APP | |
|
| |||
| <12 | 20.83 | ||
| 12–23 | 1.406 | 4.081*** | 48.89 |
| 24–35 | 1.314 | 3.722*** | 46.78 |
| 36–47 | 1.284 | 3.610*** | 46.13 |
| 48–59 | 1.027 | 2.792*** | 40.42 |
|
| |||
| Large | 33.61 | ||
| Average | 0.318 | 1.374** | 39.95 |
| Small | 0.753 | 2.123*** | 49.47 |
|
| |||
| <24 | 0.383 | 1.467*** | 47.35 |
| 24–47 | 0.208 | 1.231** | 43.47 |
| 48+ | 38.90 | ||
|
| |||
| Illiterate | 0.642 | 1.900*** | 44.23 |
| Primary | 0.592 | 1.807*** | 42.92 |
| Secondary | 0.418 | 1.519*** | 39.08 |
| Higher | 32.10 | ||
|
| |||
| <18.5 | 0.270 | 1.310*** | 45.91 |
| 18.5–24.99 | 39.81 | ||
| 25+ | −0.346 | 0.708*** | 33.19 |
|
| |||
| Poorest | 1.109 | 3.031*** | 51.26 |
| Poorer | 0.869 | 2.385*** | 45.68 |
| Middle | 0.673 | 1.961*** | 41.20 |
| Richer | 0.451 | 1.570*** | 36.48 |
| Richest | 27.71 | ||
|
| |||
| Small (<4) | 0.173 | 1.189* | 42.58 |
| Middle (4–6) | 39.00 | ||
| Large (7+) | 0.177 | 1.194** | 42.80 |
|
| |||
| Urban | 42.84 | ||
| Rural | −0.153 | 0.858* | 39.71 |
|
| |||
| Barisal | 41.29 | ||
| Chittagong | 0.011 | 1.011 | 41.54 |
| Dhaka | 0.108 | 1.114 | 43.65 |
| Khulna | −0.198 | 0.820 | 37.34 |
| Rajshahi | −0.400 | 0.671*** | 33.12 |
| Rangpur | −0.057 | 0.944 | 40.12 |
| Sylhet | 0.158 | 1.171 | 44.60 |
| Goodness-of-fit | H-L test: |
| |
| Omnibus test: | |||
| R2 value | 0.125 | 0.124 | |
*** P < 0.001; ** P < 0.01; * <0.05
Priority index and significance for the risk factors of child malnutrition in Bangladesh via interval-scale (IS-MCA) and nominal-scale (NS-MCA) multiple classification analysis models
| Risk factors | Priority index from IS-MCA model | Priority index form NS-MCA model | |||||||
|---|---|---|---|---|---|---|---|---|---|
|
|
|
| F |
|
|
| F |
| |
| Child’s age in months | 4 | 0.254 | 0.254 | 146.165 | 0.000 | 0.207 | 0.206 | 91.542 | 0.000 |
| Child’s birth weight | 2 | 0.111 | 0.096 | 41.555 | 0.000 | 0.107 | 0.092 | 36.567 | 0.000 |
| Birth interval in months | 2 | 0.117 | 0.056 | 13.206 | 0.000 | 0.108 | 0.056 | 12.277 | 0.000 |
| Mother’s education | 3 | 0.225 | 0.091 | 18.570 | 0.000 | 0.186 | 0.067 | 9.223 | 0.000 |
| Mother’s BMI (kg/m2) | 2 | 0.165 | 0.071 | 19.613 | 0.000 | 0.157 | 0.079 | 23.309 | 0.000 |
| Wealth index | 4 | 0.263 | 0.201 | 50.111 | 0.000 | 0.217 | 0.166 | 32.104 | 0.000 |
| Family size (number of members) | 2 | 0.013 | 0.037 | 6.082 | 0.002 | 0.009 | 0.038 | 5.996 | 0.002 |
| Region(Division) | 6 | 0.105 | 0.072 | 7.630 | 0.000 | 0.098 | 0.071 | 7.022 | 0.000 |
| Place of resident | 1 | 0.098 | 0.025 | 4.471 | 0.035 | 0.074 | 0.029 | 5.681 | 0.017 |
Note: η and β indicates priority indices before and after the adjustment of other predictors respectively
Correct classification rate of children nutrition status based on height-for-age Z-score (HAZ) as either malnourish (HAZ < −2.0) or nourish (HAZ ≥ −2.0) from linear regression (LM) and logistic regression (BLogM) models, and the overall correct classification rate of children nutrition status by LM and BLogM models, BDHS 2011
| Observed | Predicted nutrition status by LM | Correct classification by LM (%) | Predicted nutrition status by BLogM | Correct classification by BLogM (%) | ||
|---|---|---|---|---|---|---|
| Nourish | Malnourish | Nourish | Malnourish | |||
| Nourish | 3609 | 913 | 79.8 | 3541 | 996 | 78.0 |
| Malnourish | 1657 | 1432 | 46.4 | 1571 | 1539 | 49.5 |
| Overall correct classification rate (%) | 65.3 | 66.4 | ||||
Note: Correct classification rates are row wise percentages