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11 ) 3,190 21, ) ) ( )

12 General Health Questionnaire ) , N 6

13 (0.6) 955 (99.4) N= ( )30 (30 39 ) 330 (34.3) 20 (22 29 ) 314 (32.7) N=

14 3) 779 (81.4%) (14.7%) 23 (2.4%) N= ) ( ) (51.7) (28.0) N= ( ) 09630(68.1) (20.4) N=

15 5) 949 (99.2) N= ) (55.2%) 139 (14.5%) 101 (10.6%) N=

16 ) 426 (47.0) 419 (46.2) N= ) 891 (98.3) N= ) (40.2) (29.0) 171 (18.9) N=

17 ) 593 (62.1) 362 (37.9 N= ) 671 (70.3)284 (29.7) N= ) 401 (42.0)554 (58.0) N=

18 ) 25 (X26) (29.0)199 (24.9)189 (23.7) 759 (95.0)695 (87.0)647 (80.9) 14 N=799 2) (X22 X23 X24 X25) 21 ( 12

19 ) 1 5 ( 1) ( 15) Y19 y20 y18 y21 y15 y11 y8 y6 y17 y16 y13 y12 y4 y3 y1 y = df = 100, p= 0.00, CFI =0.913, TLI=0.896 RMSEA= 0.063SRMR=

20 ) 23 (X24) (61.3)403 (44.8)395 (43.9) 653 (72.6) 494 (54.9)400 (44.5) 16 N=899 2) 1 70X5 14

21 (X14X15( )X16X17X18 ) 17 () 1 4 ( 2) ( 17) Y11 y9 y8 y4 y7 y10 y2 y6 y1 y3 y19 y20 y22 y = df = 73, p= 0.00, CFI =0.890, TLI=0.863 RMSEA= 0.078SRMR=

22 ) (84.7) 92 (9.8) N= (72.3) 236 (25.1) N=

23 634 (67.4) 253 (26.9) N= (54.7) 254 (27.0) N= (62.9) 190 (20.2) N=

24 574 (61.0) 303 (32.2) N= (67.9) 238 (25.3) N= (50.6) 451 (47.9) N=

25 682 (72.5) 220 (23.4) N= (55.9) 236 (25.1) N= (65.7) 216 (23.0) N=

26 509 (54.1) 188 (20.0%) N= (61.1) 240 (25.5) N= (56.2) 353 (37.5) N=

27 527 (56.0) 314 (33.4) N= ) ( 33) y1 y2 y3 y4 y5 y6 y7 y8 y9 y10 y11 y12 y13 y14 y = df = 68, p= 0.00, CFI =0.941, TLI=0.963 RMSEA= SRMR=

28 X X X α X X X α X X X X X X α X X X α α α ) ( 45 ) 23.2 ( ) ( 34) N=

29 ) N=

30 36 N= y1 y2 y3 y4 y5 y9 y10 y11 y6 y7 y8 y = df = 40, p= 0.00, CFI = 0.921, TLI=0.935, RMSEA= 0.066,SRMR=

31 α X X X α X X α X X X X α α α 2 3) (24 ) 11.0 ( ) 38 N=845 25

32 4) y1 y2 y3 y4 y5 y9 y10 y11 y6 y7 y8 y = df = 40, p= 0.00, CFI = 0.944, TLI=0.972, RMSEA= 0.070,SRMR= α X X X α X X α X X X X α α α 2 26

33 5) ( 24 ) 12.9 ( ) ( 40) N=

34 8 1) General Health Questionnaire General Health Questionnaire ( )( 41) N=

35 ) 478 (52.4) 324 (35.5) N= ) (44.6) ( ) 392 (42.9) 350 (38.3) 333 (36.5) () 43 N=913 29

36 3) 571 (62.5) 342 (37.5) N= ) 679 (74.4) N=

37 ) (31.3) 646 (68.7) 45.4 ( ) 2) 311 (33.0) 316 (33.6) N= ) (52.5) N=

38 4) (40.3) (36.0) N= (55.2) N= (86.9)

39 ) 598 (65.6) 283 (31.0) N= (56.0) 389 (42.7) N=

40 609 (66.8) 241 (26.4) N= (45.0) 322 (35.3) N=

41 495 (54.3) 322 (35.3) N= (59.8) 199 (21.8) N=

42 460 (50.4) 271 (29.7) N= (65.0) 230 (25.2) N=

43 709 (77.7) (23.4) N= (40.9) 257 (28.2) N=

44 424 (46.5) 340 (37.3) N= (50.4) 182 (20.0%) N=

45 574 (62.9) 214 (23.5) N= (58.1) 264 (28.9) N=

46 576 (63.2) 202 (22.1) N=

47 ) 272 (34.3) (23.9) 65 N=794 41

48 2) (47.1) 51 (5.4) N=

49 (44.3) N= (63.6) N=

50 13, (29.0) 199 (24.9)189 (23.7) 759 (95.0)695 (87.0) 647 (80.9) (61.3) 403 (44.8)395 (43.9) 653 (72.6) 494 (54.9)400 (44.5)

51 (44.6)( ) 392 (42.9) 350 (38.3) 333 (36.5) () 571 (62.5) 342 (37.5) 7 45

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