Lampiran 1 Analisis ragam bobot realif bursa Fabricius, timus, dan limpa 20 hari p.i

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1 Lampiran 1 Analisis ragam bobot realif bursa Fabricius, timus, dan limpa 20 hari p.i ANOVA Rasio B Fab Rasio timus Rasio limpa Squares df Square F Sig E E E E E E E E E E E E E E E Dependent Variable Rasio B Fab (I) Perlakuan (J) Perlakuan N N N N N N N Rasio timus Rasio limpa N N N N N N N N N N N N N N N N N 6.333E E E E E-03* 5.055E E E E-03* 5.055E E E E E E E E E E E E E E E E-03* 5.055E E E E E E E-04 0E E E E E-03* 5.055E E E E E E E-04-00E E E E-03 0E E E E E E E E E-03* 1.101E E E-03-00E E E E E E E E E-03* 1.101E E E E E E E E E E E E E E E E-03* 1.101E E E E-03* 1.101E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E E-04 72

2 Lampiran 2 Analisis ragam bobot realif bursa Fabricius, timus, dan limpa 40 hari p.i ANOVA Rasio B Fab Rasio timus Rasio limpa Squares df Square F Sig Dependent Variable Rasio B Fab Rasio timus Rasio limpa (I) Perlakuan N N N N N (J) Perlakuan N N N N N N N N N N N N N N N Lampiran 3 Analisis ragam diameter N folikel bursa Fabricius 20 hari p.i N N N

3 ANOVA folikel Squares df Square F Sig Dependent Variable: folikel (I) perlakua (J) perlakua * * * * * * * * Lampiran 4 Analisis ragam diameter folikel bursa Fabricius 40 hari p.i 74

4 ANOVA folikel Squares df Square F Sig Dependent Variable: folikel (I) perlkuan (J) perlkuan * * * * Lampiran 5 Analisis ragam reaksi positif inos 20 hari p.i 75

5 ANOVA inos Squares df Square F Sig Dependent Variable: inos (I) perlakua (J) perlakua * * * * * * * * * * Lampiran 6 Analisis ragam titer antibodi terhadap MDV 76

6 Tests of Between-Subjects Effects Source Type III Sum of Squares Df Square F Sig. Partial Eta Squared Corrected Model 1.239(a) Intercept PERL UMUR PERL * UMUR Error E Corrected a R Squared =.447 (Adjusted R Squared =.194) Dependent Variable: absorb (I) umur 10 hari 20 hari 30 hari (J) umur 20 hari 30 hari 10 hari 30 hari 10 hari 20 hari Based on observed means * * Dependent Variable: absorb (I) perl benalu tanpa infeksi tanpa benalu tanpa infeksi benalu infeksi tanpa benalu infeksi (J) perl tanpa benalu tanpa infeksi benalu infeksi tanpa benalu infeksi benalu tanpa infeksi benalu infeksi tanpa benalu infeksi benalu tanpa infeksi tanpa benalu tanpa infeksi tanpa benalu infeksi benalu tanpa infeksi * * Lampiran 7 Analisis tanpa ragam benalu sel tanpa darah putih dan presentase limfosit pada 20 p.i. infeksi benalu infeksi Based on observed means

7 sdp limposit ANOVA Squares df Square F Sig Dependent Varia (I) Perlakua(J) Perlakua (I-J) Std. Error Sig. Lower BoundUpper Bound sdp N N N N N N N N limposit N N * N N * N N N * N * Lampiran 8 Analisis ragam sel darah putih dan presentase limfosit pada 40 p.i. 78

8 sdp limposit ANOVA Squares df Square F Sig Dependent Vari sdp limposit (I) Perlakua(J) Perlakua (I-J) Std. Error Sig. Lower BoundUpper Bound N N N N N N N N N N N N N N N N Lampiran 9 Analisis ragam jumlah limfosit submukosa proventrikulus pada 20 p.i. 79

9 ANOVA limprove Squares df Square F Sig Dependent Variable: limprove (I) prlkuan (J) prlkuan * * Lampiran 10 Analisis ragam jumlah limfosit submukosa proventrikulus pada 40 p.i. 80

10 ANOVA limprov Squares df Square F Sig Dependent Variable: limprov (I) perlkuan (J) perlkuan * * * * * *

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