Valid Missing Total. N Percent N Percent N Percent , ,0% 0,0% 2 100,0% 1, ,0% 0,0% 2 100,0% 2, ,0% 0,0% 5 100,0%

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1 dimension1 GET FILE= validacaonestscoremédico.sav' (só com os 59 doentes) /COMPRESSED. SORT CASES BY UMcpEVA (D). EXAMINE VARIABLES=UMcpEVA BY NoRespostasSignif /PLOT BOXPLOT HISTOGRAM NPPLOT /COMPARE GROUPS /STATISTICS DESCRIPTIVES EXTREME /CINTERVAL 95 /MISSING LISTWISE /NOTOTAL. Warnings UMcpEVA is constant when NoRespostasSignif =,00. It will be included in any boxplots produced but other output will be omitted. UMcpEVA is constant when NoRespostasSignif = 7,00. It will be included in any boxplots produced but other output will be omitted. Case Processing Summary NoRespostasSignif Cases Valid Missing Total N Percent N Percent N Percent UMcpEVA, ,0% 0,0% 2 100,0% 1, ,0% 0,0% 2 100,0% 2, ,0% 0,0% 5 100,0% 3, ,0% 0,0% ,0% 4, ,0% 0,0% ,0% 5, ,0% 0,0% ,0% 6, ,0% 0,0% 7 100,0% 7, ,0% 0,0% 1 100,0% 8, ,0% 0,0% 2 100,0% Descriptives a,b NoRespostasSignif Statistic Std. Error UMcpEVA 1,00 3,50,500 Lower Bound -2,85 Upper Bound 9,85 5% Trimmed. Median 3,50 Variance,500 Std. Deviation,707 Minimum 3 Maximum 4 Range 1 Interquartile Range. Skewness.. Kurtosis..

2 2,00 4,60 1,249 Lower Bound 1,13 Upper Bound 8,07 5% Trimmed 4,72 Median 6,00 Variance 7,800 Std. Deviation 2,793 Minimum 0 Maximum 7 Range 7 Interquartile Range 5 Skewness -1,496,913 Kurtosis 2,041 2,000 3,00 4,27,787 Lower Bound 2,52 Upper Bound 6,03 5% Trimmed 4,36 Median 5,00 Variance 6,818 Std. Deviation 2,611 Minimum 0 Maximum 7 Range 7 Interquartile Range 5 Skewness -,693,661 Kurtosis -,741 1,279 4,00 6,00,518 Lower Bound 4,91 Upper Bound 7,09 5% Trimmed 6,17 Median 6,50 Variance 4,824 Std. Deviation 2,196 Minimum 0 Maximum 9 Range 9 Interquartile Range 3 Skewness -1,199,536 Kurtosis 1,957 1,038

3 5,00 5,55,802 Lower Bound 3,76 Upper Bound 7,33 5% Trimmed 5,55 Median 5,00 Variance 7,073 Std. Deviation 2,659 Minimum 1 Maximum 10 Range 9 Interquartile Range 4 Skewness,094,661 Kurtosis -,563 1,279 6,00 6,14,829 Lower Bound 4,11 Upper Bound 8,17 5% Trimmed 6,16 Median 7,00 Variance 4,810 Std. Deviation 2,193 Minimum 3 Maximum 9 Range 6 Interquartile Range 4 Skewness -,252,794 Kurtosis -1,366 1,587 8,00 8,50,500 Lower Bound 2,15 Upper Bound 14,85 5% Trimmed. Median 8,50 Variance,500 Std. Deviation,707 Minimum 8 Maximum 9 Range 1 Interquartile Range. Skewness.. Kurtosis..

4 a. UMcpEVA is constant when NoRespostasSignif =,00. It has been omitted. b. UMcpEVA is constant when NoRespostasSignif = 7,00. It has been omitted. Extreme Values e,f,g NoRespostasSignif Case Number Value UMcpEVA 1,00 Highest Lowest ,00 Highest a Lowest ,00 Highest b Lowest ,00 Highest Lowest c 5,00 Highest b Lowest

5 dimension c 6,00 Highest d Lowest ,00 Highest Lowest a. Only a partial list of cases with the value 6 are shown in the table of upper extremes. b. Only a partial list of cases with the value 5 are shown in the table of upper extremes. c. Only a partial list of cases with the value 5 are shown in the table of lower extremes. d. Only a partial list of cases with the value 7 are shown in the table of upper extremes. e. UMcpEVA is constant when NoRespostasSignif =,00. It has been omitted. f. The requested number of extreme values exceeds the number of data points. A smaller number of extremes is displayed. g. UMcpEVA is constant when NoRespostasSignif = 7,00. It has been omitted. Tests of Normality b,c NoRespostasSignif Kolmogorov-Smirnov a Shapiro-Wilk Statistic df Sig. Statistic df Sig. UMcpEVA 1,00, ,00,292 5,190,845 5,180 3,00,186 11,200 *,876 11,092 4,00,176 18,147,902 18,063 5,00,218 11,152,945 11,580 6,00,223 7,200 *,949 7,720 8,00, a. Lilliefors Significance Correction *. This is a lower bound of the true significance. b. UMcpEVA is constant when NoRespostasSignif =,00. It has been omitted. c. UMcpEVA is constant when NoRespostasSignif = 7,00. It has been omitted.

6 CORRELATIONS /VARIABLES=UMcpEVA NoRespostasSignif /PRINT=TWOTAIL NOSIG /STATISTICS DESCRIPTIVES /MISSING=PAIRWISE. Descriptive Statistics Std. Deviation N UMcpEVA 5,24 2, NoRespostasSignif 4,0169 1, Correlations NoRespostasSign UMcpEVA if UMcpEVA Pearson Correlation 1,414 ** Sig. (2-tailed),001 N NoRespostasSignif Pearson Correlation,414 ** 1 Sig. (2-tailed),001 N **. Correlation is significant at the 0.01 level (2-tailed).

7 NONPAR CORR /VARIABLES=UMcpEVA NoRespostasSignif /PRINT=SPEARMAN TWOTAIL NOSIG /MISSING=PAIRWISE. Correlations NoRespostasSign UMcpEVA if Spearman's rho UMcpEVA Correlation Coefficient 1,000,341 ** Sig. (2-tailed).,008 N NoRespostasSignif Correlation Coefficient,341 ** 1,000 Sig. (2-tailed),008. N **. Correlation is significant at the 0.01 level (2-tailed).

8

9 dimension1 Case Processing Summary UMcpEVA Cases Valid Missing Total N Percent N Percent N Percent NoRespostasSignif ,0% 0,0% 6 100,0% ,0% 0,0% 1 100,0% ,0% 0,0% 1 100,0% ,0% 0,0% 5 100,0% ,0% 0,0% 8 100,0% ,0% 0,0% ,0% ,0% 0,0% 5 100,0% ,0% 0,0% ,0% ,0% 0,0% 9 100,0% ,0% 0,0% 3 100,0% ,0% 0,0% 1 100,0% Descriptives a,b,c UMcpEVA Statistic Std. Error NoRespostasSignif 0 2,0000,68313 Lower Bound,2440 Upper Bound 3,7560 5% Trimmed 2,0000 Median 2,5000 Variance 2,800 Std. Deviation 1,67332 Minimum,00 Maximum 4,00 Range 4,00 Interquartile Range 3,25 Skewness -,384,845 Kurtosis -1,786 1, ,6000 1,02956 Lower Bound 1,7415 Upper Bound 7,4585 5% Trimmed 4,6667 Median 5,0000 Variance 5,300

10 Std. Deviation 2,30217 Minimum 1,00 Maximum 7,00 Range 6,00 Interquartile Range 4,00 Skewness -1,033,913 Kurtosis 1,129 2, ,6250,59574 Lower Bound 2,2163 Upper Bound 5,0337 5% Trimmed 3,6389 Median 3,5000 Variance 2,839 Std. Deviation 1,68502 Minimum 1,00 Maximum 6,00 Range 5,00 Interquartile Range 2,75 Skewness -,168,752 Kurtosis -,913 1, ,3000,30000 Lower Bound 3,6214 Upper Bound 4,9786 5% Trimmed 4,2778 Median 4,0000 Variance,900 Std. Deviation,94868 Minimum 3,00 Maximum 6,00 Range 3,00 Interquartile Range 1,25 Skewness,234,687 Kurtosis -,347 1, ,0000,44721 Lower Bound 1,7583 Upper Bound 4,2417 5% Trimmed 3,0000 Median 3,0000 Variance 1,000

11 Std. Deviation 1,00000 Minimum 2,00 Maximum 4,00 Range 2,00 Interquartile Range 2,00 Skewness,000,913 Kurtosis -3,000 2, ,9000,40689 Lower Bound 2,9796 Upper Bound 4,8204 5% Trimmed 3,8889 Median 4,0000 Variance 1,656 Std. Deviation 1,28668 Minimum 2,00 Maximum 6,00 Range 4,00 Interquartile Range 1,50 Skewness,618,687 Kurtosis -,047 1, ,0000,44096 Lower Bound 3,9831 Upper Bound 6,0169 5% Trimmed 4,8889 Median 5,0000 Variance 1,750 Std. Deviation 1,32288 Minimum 4,00 Maximum 8,00 Range 4,00 Interquartile Range 1,50 Skewness 1,666,717 Kurtosis 2,950 1, ,0000 1,15470 Lower Bound 1,0317 Upper Bound 10,9683 5% Trimmed. Median 6,0000 Variance 4,000

12 Std. Deviation 2,00000 Minimum 4,00 Maximum 8,00 Range 4,00 Interquartile Range. Skewness,000 1,225 Kurtosis.. a. NoRespostasSignif is constant when UMcpEVA = 1. It has been omitted. b. NoRespostasSignif is constant when UMcpEVA = 2. It has been omitted. c. NoRespostasSignif is constant when UMcpEVA = 10. It has been omitted.

13 Score Medico Ate4 Score Medico Até4 Score Médico Maior4,00 1,00 2,00 3,00 4,00 5,00 6,00 Count % within ScoreMedicoAte4 9,5% 9,5% 9,5% 23,8% 14,3% 19,0% 9,5% % within NoRespostasSignif 100,0% 100,0% 40,0% 45,5% 16,7% 36,4% 28,6% % of Total 3,4% 3,4% 3,4% 8,5% 5,1% 6,8% 3,4% Count % within ScoreMedicoAte4,0%,0% 7,9% 15,8% 39,5% 18,4% 13,2% % within NoRespostasSignif,0%,0% 60,0% 54,5% 83,3% 63,6% 71,4% % of Total,0%,0% 5,1% 10,2% 25,4% 11,9% 8,5% Total Count % within ScoreMedicoAte4 3,4% 3,4% 8,5% 18,6% 30,5% 18,6% 11,9% % within NoRespostasSignif 100,0% 100,0% 100,0% 100,0% 100,0% 100,0% 100,0% % of Total 3,4% 3,4% 8,5% 18,6% 30,5% 18,6% 11,9% Total 7,00 8,00 total ScoreMedicoAte4 scoremedicoaté4 Count % within ScoreMedicoAte4 4,8%,0% 100,0% % within NoRespostasSignif 100,0%,0% 35,6% % of Total 1,7%,0% 35,6% ScoreMédicoMaior4 Count % within ScoreMedicoAte4,0% 5,3% 100,0% % within NoRespostasSignif,0% 100,0% 64,4% % of Total,0% 3,4% 64,4% Total Count % within ScoreMedicoAte4 1,7% 3,4% 100,0% % within NoRespostasSignif 100,0% 100,0% 100,0% % of Total 1,7% 3,4% 100,0% X2 sem significado (algumas células com <5 doentes) Symmetric Measures Asymp. Std. Value Error a Approx. T b Approx. Sig. Interval by Interval Pearson's R,265,125 2,073,043 c Ordinal by Ordinal Spearman Correlation,220,136 1,703,094 c N of Valid Cases 59 a. Not assuming the null hypothesis. b. Using the asymptotic standard error assuming the null hypothesis.

14 Symmetric Measures Asymp. Std. Value Error a Approx. T b Approx. Sig. Interval by Interval Pearson's R,265,125 2,073,043 c Ordinal by Ordinal Spearman Correlation,220,136 1,703,094 c N of Valid Cases 59 a. Not assuming the null hypothesis. b. Using the asymptotic standard error assuming the null hypothesis. c. Based on normal approximation.

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