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From: The effect of modifiable risk factors on geographic mortality differentials: a modelling study

Region        
Age Major city Inner regional Outer regional Total
  Sample count Complete data Sample count Complete data Sample count Complete data Sample count Complete data
   Males       
40-45 242 240 147 144 208 203 597 587
45-49 270 267 176 176 217 209 663 652
50-54 314 310 171 170 197 194 682 674
55-59 248 245 121 115 129 126 498 486
60-64 210 206 107 104 112 111 429 421
65-69 206 201 91 88 101 100 398 389
70-74 138 133 106 100 89 85 333 318
75 and over 186 181 86 84 90 88 362 353
Total 1,814 1,783 1,005 981 1,143 1,116 3,962 3,880
   Females       
40-45 357 349 212 206 244 244 813 799
45-49 351 341 223 220 229 227 803 788
50-54 346 339 196 193 201 196 743 728
55-59 296 291 142 138 171 170 609 599
60-64 263 260 105 104 120 118 488 482
65-69 185 184 125 120 126 125 436 429
70-74 192 189 110 105 99 97 401 391
75 and over 219 215 115 108 117 115 451 438
Total 2,209 2,168 1,228 1,194 1,307 1,292 4,744 4,654