Lampiran 6 HASIL STATISTIK

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1 Lampiran 6 HASIL STATISTIK Usia of.450 Median Mode 12 Std. Deviation Minimum 2 Maximum 16 usia Frequency Valid Valid

2 Descriptives Statistic usia Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum 2 Maximum 16 Range 14 Interquartile Range 4 Skewness Kurtosis Tests of Normality Statistic df Sig. Statistic df Sig. usia Kelamin 1.50 of.065 Median 1.50 Mode Std. Deviation.504 Minimum 1 Maximum 2 a. Multiple modes exist. The smallest value is shown 1 a 2

3 kelamin Frequency Valid Valid LAKI-LAKI PEREMPUAN Descriptives Statistic Kelamin Lower Bound 1.37 Upper Bound % Trimmed 1.50 Median 1.50 Variance.254 Std. Deviation.504 Minimum 1 Maximum 2 Range 1 Interquartile Range 1 Skewness Kurtosis Tests of Normality Statistic df Sig. Statistic df Sig. Kelamin

4 Operasi 1.57 of.065 Median 2.00 Mode 2 Std. Deviation.500 Minimum 1 Maximum 2 Operasi Frequency Valid Valid PERNAH TIDAK PERNAH Descriptives Statistic Operasi Lower Bound 1.44 Upper Bound % Trimmed 1.57 Median 2.00 Variance.250 Std. Deviation.500 Minimum 1 Maximum 2 Range 1 Interquartile Range 1 Skewness Kurtosis

5 Tests of Normality Statistic Df Sig. Statistic df Sig. Operasi Komuni of.302 Median Mode 13 Std. Deviation Minimum 9 Maximum 18 komuni Frequency Valid Valid

6 Descriptives Statistic Komuni Lower Bound Upper Bound % Trimmed Median Variance Std. Deviation Minimum 9 Maximum 18 Range 9 Interquartile Range 3 Skewness Kurtosis Tests of Normality Statistic df Sig. Statistic df Sig. Komuni Cemas 6.84 of.484 Median 6.50 Mode Std. Deviation Minimum 2 Maximum 14 a. Multiple modes exist. The smallest value is shown 3 a 6

7 cemas Frequency Valid Valid Descriptives Statistic Cemas Lower Bound 5.88 Upper Bound % Trimmed 6.71 Median 6.50 Variance Std. Deviation Minimum 2 Maximum 14 Range 12 Interquartile Range 5 Skewness Kurtosis

8 Tests of Normality Statistic df Sig. Statistic df Sig. Cemas Komunikasi.30 of.060 Median.00 Mode 0 Std. Deviation.462 Minimum 0 Maximum 1 Komunikasi Frequency Valid Valid baik tidak baik Descriptives 8

9 Statistic Komunikasi Lower Bound.18 Upper Bound.42 5% Trimmed.28 Median.00 Variance.214 Std. Deviation.462 Minimum 0 Maximum 1 Range 1 Interquartile Range 1 Skewness Kurtosis Tests of Normality Statistic df Sig. Statistic df Sig. Komunikasi Kecemasan 1.10 of.039 Median 1.00 Mode 1 Std. Deviation.303 Minimum 1 Maximum 2 Kecemasan 9

10 Frequency Valid Valid Tidak Baik Baik Descriptives Statistic Kecemasan Lower Bound 1.02 Upper Bound % Trimmed 1.06 Median 1.00 Variance.092 Std. Deviation.303 Minimum 1 Maximum 2 Range 1 Interquartile Range 0 Skewness Kurtosis Tests of Normality Statistic df Sig. Statistic df Sig. Kecemasan

11 Case Processing Summary Cases Valid Missing Total N N N Komunikasi terapeutik * Kecemasan % 0.0% % Case Processing Summary Cases Valid Missing Total N N N komuni2 * Kecemasan % 0.0% % komuni2 * Kecemasan Crosstabulation Kecemasan Tidak Baik Baik Total komuni2 Baik Count % within komuni2 54.8% 45.2% 100.0% tidak baik Count % within komuni2 22.2% 77.8% 100.0% Total Count % within komuni2 45.0% 55.0% 100.0% Chi-Square Tests Asymp. Sig. (2- Exact Sig. (2- Exact Sig. (1- Value df sided) sided) sided) Pearson Chi-Square a Continuity Correction b Likelihood Ratio Fisher's Exact Test Linear-by-Linear Association N of Valid Cases 60 a. 0 cells (,0%) have expected count less than 5. The minimum expected count is 8,10. 11

12 Chi-Square Tests Asymp. Sig. (2- Exact Sig. (2- Exact Sig. (1- Value df sided) sided) sided) Pearson Chi-Square a Continuity Correction b Likelihood Ratio Fisher's Exact Test Linear-by-Linear Association N of Valid Cases 60 a. 0 cells (,0%) have expected count less than 5. The minimum expected count is 8,10. b. Computed only for a 2x2 table Risk Estimate 95% Confidence Interval Value Lower Upper Odds Ratio for komuni (baik / tidak baik) For cohort Kecemasan = Tidak Baik For cohort Kecemasan = Baik N of Valid Cases 60 Data Univariat Numerik Variabel Median SD Min Mak 95% CI Usia Anak Data Univariat Katagorik Jenis Kelamin Jumlah Prosentase Laki Laki Perempuan T0tal

13 Pengalaman Operasi Jumlah Prosentase Pernah Tidak Pernah T0tal Komunikasi Jumlah Prosentase Baik Tidak Baik T0tal Kecemasan Jumlah Prosentase Tidak Cemas Cemas T0tal Tabel Bivariat Kecemasan Tidak Komunikasi Baik Total OR Baik (95% CI) N % N % N % Baik Tidak Baik Total P Value 0,041 Ket : Untuk Komunikasi cut of point menggunakan median : Untuk Kecemasan cut of point menggunakan mean :

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