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1 no umur umur j agama peerjaan ttinggal tpstroe rpa

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4 rps1 HT DM PJK GGK lt lphn smbrbiaya lmrwtn sp

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7 ies Statistics N Missi ng Na ma umu r Sex Aga ma Pe erja an TTi ngg al Tip estr u HT DM PJK GG K LKl mp SB Lmr wata n KSP y Table umur y Sex y Lai-lai Perempua n

8 Agama y Islam Kristen Protestan Katoli PNS/TNI/POLR I/PENSIUNAN y Peerjaan Petani Wiraswasta IRT Lainnya TTinggal y Kabanjahe Luar Kabanjahe TipeStru y Hemoragi Non-Hemorag i

9 Riwayat Penyait Sebelumnya HT y Ya Tida DM y Ya Tida PJK y Ya Tida GGK y Ya Tida

10 LKlmp y Satu Sisi Dua Sisi SB y BPJS Umu m Lmrwatan y

11 KSP Frequen cy PBJ PAPS Rujuan Meninggal umur * Sex Crosstabulation umur Sex Total Lai-lai Perempua n Lai-lai Expected umur 60.0% 40.0% 100.0% Sex 11.5% 6.1% 8.5% % of Total 5.1% 3.4% 8.5% Expected umur 54.2% 45.8% 100.0% Sex 25.0% 16.7% 20.3% % of Total 11.0% 9.3% 20.3% Expected umur 15.0% 85.0% 100.0% Sex 5.8% 25.8% 16.9% % of Total 2.5% 14.4% 16.9% Expected umur 78.9% 21.1% 100.0% Sex 28.8% 6.1% 16.1% % of Total 12.7% 3.4% 16.1% Expected

12 umur 47.4% 52.6% 100.0% Sex 17.3% 15.2% 16.1% % of Total 7.6% 8.5% 16.1% Expected umur 35.7% 64.3% 100.0% Sex 9.6% 13.6% 11.9% % of Total 4.2% 7.6% 11.9% Expected umur 11.1% 88.9% 100.0% Sex 1.9% 12.1% 7.6% % of Total.8% 6.8% 7.6% Expected umur.0% 100.0% 100.0% Sex.0% 4.5% 2.5% % of Total.0% 2.5% 2.5% Total Expected umur 44.1% 55.9% 100.0% Sex 100.0% 100.0% 100.0% % of Total 44.1% 55.9% 100.0%

13 TipeStru * umur Crosstabulation umur Total < 45 >= 45 < 45 TipeStru Hemoragi TipeStru 5.7% 94.3% 100.0% umur 33.3% 29.5% 29.7% % of Total 1.7% 28.0% 29.7% Non-Hemorag i TipeStru 4.8% 95.2% 100.0% umur 66.7% 70.5% 70.3% % of Total 3.4% 66.9% 70.3% Total TipeStru 5.1% 94.9% 100.0% umur 100.0% 100.0% 100.0% % of Total 5.1% 94.9% 100.0% Chi-Square Tests Value df Asymp. (1-sided) Pearson Chi-Square.041(b) Continuity Correction(a) Lielihood Ratio Fisher's Test Linear-by-Linear Association N of Cases 118 a Computed only for a 2x2 table b 2 cells (50.0%) have expected count less than 5. The minimum expected count is 1.78.

14 T-Test Group Statistics Lmrwata n Std. TipeStru N Mean Std. Deviation Error Mean Hemoragi Non-Hemorag i Independent Samples Test Lmrw atan Equal variances assumed Equal variances not assumed Levene's Test for Equality of Variances F T df Lowe r Upper t-test for Equality of Means Std. Mean Error (2-taile Differ Differe d) ence nce Lowe r Upper Lower Upper Lower Upper % Confidence Interval of the Difference Lowe r T-Test Group Statistics Lmrwata n Std. SB N Mean Std. Deviation Error Mean BPJS Umu m

15 Independent Samples Test Lmrw atan Equal variances assumed Equal variances not assumed Levene's Test for Equality of Variances F t df Lowe r Upper t-test for Equality of Means Std. Mean Error (2-tailed Differ Differ ) ence ence 95% Confidence Interval of the Difference Lowe r Upper Lower Upper Lower Upper Lower Crosstabs Notes Case Processing Summary HT * TipeStru DM * TipeStru PJK * TipeStru GGK * TipeStru Cases Missing Total N N N % 0.0% % % 0.0% % % 0.0% % % 0.0% % HT * TipeStru Crosstab TipeStru Total Hemoragi Non-Hemorag i Hemoragi HT Ya Tida Total

16 Chi-Square Tests Value df Asymp. (1-sided) Pearson Chi-Square 4.775(b) Continuity Correction(a) Lielihood Ratio Fisher's Test Linear-by-Linear Association N of Cases 118 a Computed only for a 2x2 table b 0 cells (.0%) have expected count less than 5. The minimum expected count is DM * TipeStru Crosstab TipeStru Total Hemoragi Non-Hemoragi Hemoragi DM Ya Tida Total Chi-Square Tests Value df Asymp. (1-sided) Pearson Chi-Square 9.880(b) Continuity Correction(a) Lielihood Ratio Fisher's Test Linear-by-Linear Association N of Cases 118 a Computed only for a 2x2 table b 0 cells (.0%) have expected count less than 5. The minimum expected count is 6.82.

17 PJK * TipeStru Crosstab TipeStru Total Hemoragi Non-Hemora gi Hemorag i PJK Ya Tida Total Chi-Square Tests Value df Asymp. (1-sided) Pearson Chi-Square.923(b) Continuity Correction(a) Lielihood Ratio Fisher's Test Linear-by-Linear Association N of Cases 118 a Computed only for a 2x2 table b 1 cells (25.0%) have expected count less than 5. The minimum expected count is GGK * TipeStru Crosstab TipeStru Total Hemoragi Non-Hemor agi Hemora gi GGK Ya Tida Total

18 Chi-Square Tests Value df Asymp. (1-sided) Pearson Chi-Square.858(b) Continuity Correction(a) Lielihood Ratio Fisher's Test Linear-by-Linear Association N of Cases 118 a Computed only for a 2x2 table b 2 cells (50.0%) have expected count less than 5. The minimum expected count is.59. Case Processing Summary TipeStru * rps2 Cases Missing Total N N N % 0.0% % TipeStru * rps2 Crosstabulation TipeStr u Hemoragi satu riwayat penyait rps2 lebih dari satu riwayat penyait Total satu riwayat penyai t TipeStru 80.0% 20.0% 100.0% rps2 27.5% 43.8% 29.7% % of Total 23.7% 5.9% 29.7% Non-Hemora

19 gi TipeStru 89.2% 10.8% 100.0% rps2 72.5% 56.3% 70.3% % of Total 62.7% 7.6% 70.3% Total TipeStru 86.4% 13.6% 100.0% rps % 100.0% 100.0% % of Total 86.4% 13.6% 100.0% Chi-Square Tests Value df Asymp. Pearson Chi-Square 1.761(b) Continuity Correction(a) Lielihood Ratio Fisher's Test Linear-by-Linear (2-sided ) (1-sided ) Association N of Cases 118 a Computed only for a 2x2 table b 1 cells (25.0%) have expected count less than 5. The minimum expected count is Crosstabs TipeStru * KSP Note Cases Missing Total N N N % 0.0% %

20 TipeStru * KSP Crosstabulation KSP PBJ PAPS Rujuan Meningg al Total TipeStru Hemoragi Non-Hemorag i Total Chi-Square Tests Value df Asymp. Pearson (a Chi-Square ) Lielihood Ratio Linear-by-Linear Association N of Cases 118 a 1 cells (12.5%) have expected count less than 5. The minimum expected count is 3.56.

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