Question

In: Statistics and Probability

Table 3. Correlations Between CSS and HRQoL (n = 91). Total CSSa CSa MFa Total HRQoL...

Table 3. Correlations Between CSS and HRQoL (n = 91). Total CSSa CSa MFa Total HRQoL PD ED GD Total CSSa 1 CSa 0.92** 1 MFa 0.87** 0.60** 1 Total HRQoL −0.16 −0.01 −0.32** 1 PD −0.21* −0.09 −0.35** 0.93** 1 ED −0.11 −0.03 −0.19 0.77** 0.57** 1 GD −0.08 −0.10 −0.29** 0.93** 0.80** 0.63** 1 Note. CSS = Cardiac Self-Efficacy Scale; CS = Control Symptoms (subscale); MF = Maintain Functioning (subscale); HRQoL = health-related quality of life; PD = physical domain; ED = emotional domain; GD = general domain. a Mean average. *Statistically significant correlation at p < .05 level. **Statistically significant correlation at p < .01 level

In Table 3, list the significant correlations and include the correlation value.

In Table 3, explain the relationship between the Maintain functioning subscale and the physical domain.

Solutions

Expert Solution

Result:

Table 3. Correlations Between CSS and HRQoL (n = 91).

TotalCSSa

CSa

MFa

TotalHRQoL

PD

ED

GD

TotalCSSa

1

CSa

0.92**

1

MFa

0.87**

0.60**

1

TotalHRQoL

−0.16

−0.01

−0.32**

1

PD

−0.21*

−0.09

−0.35**

0.93**

1

ED

−0.11

−0.03

−0.19

0.77**

0.57**

1

GD

−0.08

−0.10

−0.29**

0.93**

0.80**

0.63**

1

Note. CSS = Cardiac Self-Efficacy Scale; CS = Control Symptoms (subscale); MF = Maintain Functioning (subscale); HRQoL = health-related quality of life; PD = physical domain; ED = emotional domain; GD = general domain. a Mean average. *Statistically significant correlation at p < .05 level. **Statistically significant correlation at p < .01 level

In Table 3, list the significant correlations and include the correlation value.

Significant correlations are:

Between TotalCSSa and CSa = 0.92

Between TotalCSSa and MFa = 0.87

Between TotalCSSa and PD = -0.21

Between MFa and CSa = 0.60

Between MFa and TotalHRQoL = -0.32

Between MFa and PD = -0.35

Between MFa and GD = -0.29

Between TotalHRQoL and PD = 0.93

Between TotalHRQoL and ED = 0.77

Between TotalHRQoL and GD = 0.93

Between PD and ED = 0.57

Between PD and GD = 0.80

Between ED and GD = 0.63

In Table 3, explain the relationship between the Maintain functioning subscale and the physical domain.

Correlation Between MFa and PD r = -0.35.

There is significant correlation between Maintain functioning subscale and the physical domain (r = -0.35). The relation is negative indicates that the Maintain functioning subscale increases the physical domain score decreases.


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