Reading /usr/local/freesurfer_4.0.1/lib/tcl/tkUtils.tcl Loading data table /media/storage2/proc/freesurfer/60_w2/checked/qdec/qdec.table.dat... Number of columns: 8 fsid column: 1 Number of factors: 7 Number of subjects: 354 Reading discrete factor levels from config file /media/storage2/proc/freesurfer/60_w2/checked/qdec/gender.levels...'Male','Female', done. Data table /media/storage2/proc/freesurfer/60_w2/checked/qdec/qdec.table.dat loaded. Input table: /media/storage2/proc/freesurfer/60_w2/checked/qdec/qdec.table.dat Subject #, Subject ID, Factor Data... 0 60047 Female 68.000000 1288832.698000 10.000000 10.000000 10.000000 29.000000 1 60092 Male 65.000000 1757226.538000 11.000000 5.000000 6.000000 29.000000 2 60094 Female 69.000000 1343161.349000 13.000000 11.000000 9.000000 30.000000 3 60129 Female 69.000000 1725766.291000 18.000000 11.000000 8.000000 29.000000 4 60145 Male 68.000000 1553236.286000 18.000000 11.000000 7.000000 29.000000 5 60155 Female 69.000000 1513584.930000 16.000000 8.000000 9.000000 30.000000 6 60160 Male 66.000000 1577818.948000 18.000000 7.000000 7.000000 30.000000 7 60241 Male 68.000000 1759596.527000 12.000000 4.000000 2.000000 26.000000 8 60286 Female 65.000000 1448388.018000 11.000000 7.000000 6.000000 30.000000 9 60326 Male 65.000000 1588020.595000 16.000000 8.000000 6.000000 30.000000 10 60330 Male 69.000000 1541484.221000 16.000000 11.000000 11.000000 30.000000 11 60345 Female 67.000000 1555040.747000 12.000000 5.000000 4.000000 30.000000 12 60398 Male 65.000000 1636856.822000 18.000000 5.000000 4.000000 30.000000 13 60408 Female 65.000000 1381603.594000 10.000000 7.000000 7.000000 30.000000 14 60440 Male 65.000000 1598743.946000 18.000000 7.000000 5.000000 30.000000 15 60442 Male 68.000000 1421255.346000 11.000000 8.000000 5.000000 30.000000 16 60448 Male 66.000000 1512924.694000 13.000000 6.000000 5.000000 30.000000 17 60452 Female 64.000000 1409292.867000 14.000000 7.000000 7.000000 30.000000 18 60460 Female 69.000000 1410517.606000 18.000000 8.000000 7.000000 30.000000 19 60463 Female 69.000000 1566640.521000 11.000000 11.000000 10.000000 29.000000 20 60472 Female 65.000000 1298130.493000 16.000000 13.000000 12.000000 29.000000 21 60482 Female 65.000000 1600439.858000 15.000000 12.000000 10.000000 29.000000 22 60484 Female 67.000000 1310828.696000 14.000000 15.000000 15.000000 30.000000 23 60491 Female 68.000000 1349502.707000 13.000000 5.000000 4.000000 29.000000 24 60525 Female 65.000000 1334332.941000 11.000000 7.000000 3.000000 28.000000 25 60538 Male 67.000000 1556869.698000 13.000000 9.000000 8.000000 30.000000 26 60540 Female 68.000000 1319335.086000 9.000000 7.000000 8.000000 30.000000 27 60541 Male 64.000000 1609450.363000 12.000000 6.000000 5.000000 30.000000 28 60549 Male 69.000000 1622233.372000 14.000000 13.000000 15.000000 29.000000 29 60553 Female 68.000000 1429678.272000 9.000000 8.000000 9.000000 30.000000 30 60560 Male 67.000000 1648526.126000 16.000000 4.000000 5.000000 29.000000 31 60629 Female 65.000000 1279441.287000 11.000000 7.000000 5.000000 30.000000 32 60631 Female 66.000000 1544946.591000 17.000000 7.000000 6.000000 30.000000 33 60644 Male 65.000000 1682340.760000 16.000000 7.000000 6.000000 30.000000 34 60658 Male 66.000000 1613216.933000 13.000000 12.000000 12.000000 30.000000 35 60664 Male 67.000000 1662966.677000 13.000000 8.000000 8.000000 30.000000 36 60665 Female 64.000000 1131413.633000 18.000000 10.000000 10.000000 30.000000 37 60667 Male 64.000000 1445489.059000 14.000000 7.000000 6.000000 28.000000 38 60682 Female 67.000000 1485257.755000 11.000000 7.000000 7.000000 30.000000 39 60689 Male 67.000000 1388712.025000 17.000000 6.000000 6.000000 30.000000 40 60695 Male 67.000000 1708971.940000 18.000000 6.000000 6.000000 30.000000 41 60697 Male 69.000000 1879182.752000 17.000000 9.000000 6.000000 29.000000 42 60708 Female 67.000000 1500411.734000 16.000000 8.000000 5.000000 29.000000 43 60719 Male 64.000000 1719265.287000 14.000000 7.000000 7.000000 30.000000 44 60726 Male 67.000000 1694575.772000 18.000000 7.000000 4.000000 30.000000 45 60728 Male 65.000000 1591375.210000 16.000000 8.000000 5.000000 30.000000 46 60742 Female 69.000000 1452597.031000 14.000000 5.000000 4.000000 30.000000 47 60751 Female 66.000000 1365394.008000 11.000000 7.000000 7.000000 29.000000 48 60763 Female 69.000000 1506119.148000 13.000000 10.000000 11.000000 30.000000 49 60766 Female 65.000000 1313227.826000 13.000000 8.000000 9.000000 30.000000 50 60776 Female 69.000000 1342949.620000 16.000000 4.000000 2.000000 30.000000 51 60782 Male 66.000000 1745436.415000 13.000000 5.000000 4.000000 28.000000 52 60786 Male 67.000000 1860924.703000 13.000000 7.000000 4.000000 30.000000 53 60788 Male 66.000000 1902733.360000 17.000000 7.000000 3.000000 30.000000 54 60791 Female 67.000000 1388206.862000 15.000000 8.000000 8.000000 30.000000 55 60813 Female 67.000000 1482969.737000 16.000000 8.000000 7.000000 30.000000 56 60834 Male 66.000000 1685139.033000 16.000000 5.000000 4.000000 29.000000 57 60838 Female 65.000000 1332624.630000 16.000000 10.000000 10.000000 30.000000 58 60866 Male 66.000000 1644874.302000 16.000000 12.000000 9.000000 29.000000 59 60876 Male 64.000000 1817840.217000 17.000000 7.000000 7.000000 30.000000 60 60877 Female 68.000000 1311036.993000 17.000000 9.000000 9.000000 30.000000 61 60887 Male 68.000000 1699848.889000 18.000000 9.000000 5.000000 30.000000 62 60891 Female 66.000000 1703852.838000 17.000000 7.000000 9.000000 30.000000 63 60893 Male 68.000000 1877063.471000 17.000000 7.000000 5.000000 30.000000 64 60910 Male 68.000000 1474624.274000 16.000000 6.000000 5.000000 30.000000 65 60913 Female 68.000000 1371168.814000 13.000000 2.000000 4.000000 30.000000 66 60914 Female 67.000000 1332972.011000 13.000000 10.000000 11.000000 29.000000 67 60915 Female 68.000000 1463896.680000 14.000000 7.000000 6.000000 30.000000 68 60917 Female 68.000000 1352532.419000 14.000000 6.000000 5.000000 30.000000 69 60936 Female 66.000000 1531017.508000 16.000000 7.000000 6.000000 28.000000 70 60943 Female 65.000000 1346328.933000 13.000000 5.000000 4.000000 29.000000 71 60966 Female 65.000000 1344980.144000 13.000000 7.000000 5.000000 28.000000 72 60968 Male 67.000000 1622914.640000 17.000000 9.000000 6.000000 30.000000 73 60977 Female 67.000000 1462307.397000 16.000000 5.000000 4.000000 29.000000 74 61021 Female 67.000000 1452641.373000 14.000000 9.000000 10.000000 30.000000 75 61057 Male 69.000000 1574476.374000 13.000000 7.000000 5.000000 30.000000 76 61068 Female 67.000000 1564237.955000 17.000000 7.000000 6.000000 30.000000 77 61083 Female 67.000000 1494040.136000 11.000000 5.000000 4.000000 29.000000 78 61107 Male 64.000000 1669692.785000 13.000000 7.000000 6.000000 29.000000 79 61121 Male 66.000000 1362633.154000 13.000000 4.000000 4.000000 29.000000 80 61124 Male 68.000000 1504811.105000 13.000000 6.000000 5.000000 30.000000 81 61160 Male 67.000000 1485889.285000 16.000000 6.000000 7.000000 27.000000 82 61166 Male 68.000000 1776939.102000 17.000000 7.000000 6.000000 29.000000 83 61187 Male 64.000000 1666663.328000 16.000000 6.000000 5.000000 30.000000 84 61196 Female 66.000000 1564526.574000 16.000000 6.000000 4.000000 30.000000 85 61198 Female 69.000000 1658955.953000 16.000000 9.000000 7.000000 29.000000 86 61200 Female 67.000000 1272074.003000 11.000000 9.000000 7.000000 25.000000 87 61204 Female 69.000000 1372848.059000 13.000000 10.000000 11.000000 30.000000 88 61218 Female 65.000000 1757318.654000 16.000000 7.000000 6.000000 30.000000 89 61225 Female 66.000000 1597233.229000 16.000000 8.000000 8.000000 30.000000 90 61240 Female 66.000000 1580865.015000 15.000000 7.000000 7.000000 30.000000 91 61242 Male 67.000000 1470454.776000 13.000000 6.000000 6.000000 27.000000 92 61247 Male 67.000000 1680986.153000 18.000000 9.000000 6.000000 27.000000 93 61259 Male 68.000000 1757886.455000 16.000000 9.000000 8.000000 28.000000 94 61262 Male 65.000000 2143291.076000 16.000000 4.000000 4.000000 28.000000 95 61270 Male 67.000000 1393623.158000 11.000000 8.000000 5.000000 30.000000 96 61288 Female 69.000000 1254285.450000 14.000000 6.000000 5.000000 28.000000 97 61290 Female 67.000000 1457909.175000 11.000000 10.000000 9.000000 29.000000 98 61303 Male 66.000000 1419736.131000 17.000000 7.000000 5.000000 29.000000 99 61320 Female 66.000000 1293198.569000 15.000000 12.000000 10.000000 30.000000 100 61347 Male 68.000000 1707627.640000 17.000000 6.000000 5.000000 28.000000 101 61358 Female 66.000000 1427004.931000 16.000000 10.000000 9.000000 28.000000 102 61361 Male 66.000000 1542153.537000 14.000000 11.000000 11.000000 30.000000 103 61384 Male 66.000000 1761516.704000 13.000000 8.000000 9.000000 30.000000 104 61392 Female 65.000000 1342981.520000 16.000000 9.000000 10.000000 29.000000 105 61400 Male 65.000000 1583571.290000 12.000000 8.000000 4.000000 30.000000 106 61449 Female 69.000000 1424731.779000 12.000000 9.000000 9.000000 30.000000 107 61478 Male 65.000000 1962042.769000 13.000000 7.000000 5.000000 30.000000 108 61512 Female 67.000000 1261525.458000 11.000000 10.000000 9.000000 29.000000 109 61523 Male 67.000000 2143772.827000 16.000000 6.000000 4.000000 29.000000 110 61525 Male 66.000000 1469775.086000 11.000000 9.000000 9.000000 29.000000 111 61527 Male 66.000000 1434268.128000 15.000000 8.000000 7.000000 29.000000 112 61558 Male 67.000000 1617370.945000 18.000000 9.000000 9.000000 30.000000 113 61564 Female 67.000000 1377983.206000 18.000000 7.000000 4.000000 30.000000 114 61572 Male 69.000000 1526825.118000 15.000000 7.000000 6.000000 28.000000 115 61573 Male 66.000000 1422127.797000 16.000000 5.000000 5.000000 30.000000 116 61577 Female 67.000000 1357751.587000 18.000000 7.000000 7.000000 30.000000 117 61581 Female 66.000000 1174589.132000 16.000000 6.000000 5.000000 30.000000 118 61590 Male 68.000000 1738233.636000 13.000000 6.000000 6.000000 30.000000 119 61611 Female 66.000000 1424223.244000 15.000000 6.000000 5.000000 29.000000 120 61624 Female 66.000000 1439334.702000 15.000000 6.000000 4.000000 30.000000 121 61627 Male 69.000000 1482728.706000 16.000000 6.000000 5.000000 29.000000 122 61635 Male 68.000000 1703188.144000 15.000000 8.000000 4.000000 30.000000 123 61639 Female 65.000000 1286154.450000 17.000000 8.000000 8.000000 30.000000 124 61645 Male 66.000000 1665878.213000 16.000000 7.000000 7.000000 30.000000 125 61650 Male 66.000000 1508261.226000 11.000000 4.000000 3.000000 29.000000 126 61705 Female 65.000000 1453450.767000 16.000000 12.000000 10.000000 29.000000 127 61706 Female 65.000000 1287114.544000 13.000000 8.000000 6.000000 30.000000 128 61730 Male 65.000000 1583380.964000 13.000000 8.000000 6.000000 30.000000 129 61742 Female 65.000000 1481618.564000 11.000000 8.000000 7.000000 29.000000 130 61778 Female 65.000000 1380426.206000 15.000000 8.000000 6.000000 30.000000 131 61782 Male 66.000000 1774902.725000 18.000000 7.000000 7.000000 30.000000 132 61785 Female 65.000000 1463054.132000 5.000000 6.000000 7.000000 28.000000 133 61793 Female 66.000000 1313170.552000 16.000000 7.000000 7.000000 29.000000 134 61795 Female 68.000000 1561108.805000 12.000000 9.000000 8.000000 30.000000 135 61801 Male 66.000000 1641149.761000 18.000000 6.000000 6.000000 30.000000 136 61806 Female 66.000000 1559294.691000 15.000000 6.000000 3.000000 28.000000 137 61830 Female 68.000000 1237687.276000 13.000000 7.000000 5.000000 30.000000 138 61840 Male 66.000000 1514804.706000 14.000000 7.000000 6.000000 29.000000 139 61858 Male 66.000000 1494523.098000 18.000000 5.000000 7.000000 28.000000 140 61878 Male 67.000000 1961797.763000 16.000000 6.000000 7.000000 30.000000 141 61884 Female 65.000000 1509166.007000 13.000000 9.000000 9.000000 30.000000 142 61887 Female 66.000000 1619175.672000 11.000000 5.000000 4.000000 29.000000 143 61895 Male 67.000000 1645597.996000 16.000000 10.000000 9.000000 30.000000 144 61922 Male 64.000000 1820500.306000 18.000000 5.000000 5.000000 30.000000 145 61927 Male 67.000000 1555900.523000 16.000000 11.000000 9.000000 30.000000 146 61937 Female 65.000000 1415328.292000 11.000000 8.000000 8.000000 29.000000 147 61940 Male 67.000000 1657217.427000 17.000000 6.000000 4.000000 29.000000 148 61953 Male 65.000000 1546271.811000 17.000000 9.000000 7.000000 28.000000 149 61958 Female 69.000000 1448265.431000 17.000000 5.000000 5.000000 30.000000 150 61964 Male 69.000000 1638551.233000 18.000000 9.000000 9.000000 30.000000 151 61966 Male 66.000000 1436959.389000 18.000000 7.000000 6.000000 30.000000 152 61978 Male 67.000000 1696750.140000 16.000000 9.000000 10.000000 30.000000 153 61998 Male 65.000000 1486940.373000 17.000000 5.000000 5.000000 30.000000 154 62027 Male 68.000000 1641007.156000 11.000000 6.000000 6.000000 28.000000 155 62044 Male 65.000000 1652466.228000 17.000000 5.000000 5.000000 29.000000 156 62082 Female 66.000000 1464646.824000 16.000000 8.000000 5.000000 30.000000 157 62104 Male 65.000000 1859751.863000 18.000000 7.000000 4.000000 30.000000 158 62113 Female 68.000000 1319664.371000 17.000000 10.000000 12.000000 30.000000 159 62162 Male 66.000000 1825779.217000 9.000000 6.000000 3.000000 30.000000 160 62163 Male 65.000000 1567039.487000 13.000000 7.000000 5.000000 30.000000 161 62181 Female 65.000000 1545993.730000 12.000000 7.000000 6.000000 30.000000 162 62186 Female 65.000000 1540622.006000 13.000000 8.000000 8.000000 30.000000 163 62188 Male 67.000000 1754516.886000 16.000000 8.000000 8.000000 30.000000 164 62194 Male 66.000000 1689860.299000 13.000000 10.000000 6.000000 28.000000 165 62195 Female 65.000000 1492886.181000 16.000000 8.000000 8.000000 30.000000 166 62208 Female 66.000000 1550874.760000 17.000000 10.000000 9.000000 29.000000 167 62242 Female 67.000000 1568492.784000 10.000000 8.000000 8.000000 30.000000 168 62246 Female 65.000000 1406530.595000 13.000000 8.000000 8.000000 30.000000 169 62251 Female 68.000000 1646827.123000 9.000000 6.000000 5.000000 28.000000 170 62256 Male 65.000000 1505098.556000 11.000000 5.000000 4.000000 29.000000 171 62267 Male 65.000000 1343345.128000 13.000000 5.000000 5.000000 30.000000 172 62306 Female 67.000000 1184029.296000 11.000000 6.000000 5.000000 29.000000 173 62346 Male 69.000000 1660910.865000 16.000000 8.000000 7.000000 30.000000 174 62355 Male 68.000000 1675223.258000 14.000000 8.000000 7.000000 28.000000 175 62390 Male 67.000000 1382634.901000 11.000000 4.000000 4.000000 30.000000 176 62395 Female 65.000000 1408077.178000 14.000000 9.000000 11.000000 29.000000 177 62416 Male 67.000000 1908066.594000 19.000000 5.000000 4.000000 29.000000 178 62443 Male 68.000000 1831969.327000 16.000000 8.000000 7.000000 30.000000 179 62465 Male 65.000000 1341026.916000 16.000000 4.000000 3.000000 29.000000 180 62474 Male 64.000000 1575075.883000 16.000000 6.000000 6.000000 29.000000 181 62480 Male 69.000000 1658916.279000 13.000000 6.000000 5.000000 28.000000 182 62484 Male 65.000000 1666041.487000 15.000000 7.000000 6.000000 30.000000 183 62496 Female 64.000000 1294491.442000 13.000000 7.000000 5.000000 29.000000 184 62500 Male 66.000000 1671335.698000 12.000000 6.000000 5.000000 30.000000 185 62516 Male 66.000000 1862082.105000 18.000000 8.000000 6.000000 30.000000 186 62523 Female 66.000000 1396503.365000 15.000000 6.000000 4.000000 30.000000 187 62529 Female 64.000000 1483411.037000 13.000000 7.000000 6.000000 30.000000 188 62538 Male 69.000000 1571658.209000 11.000000 7.000000 5.000000 30.000000 189 62571 Male 65.000000 1652220.385000 13.000000 4.000000 4.000000 29.000000 190 62581 Female 67.000000 1410214.309000 16.000000 8.000000 8.000000 30.000000 191 62585 Male 69.000000 1631587.293000 16.000000 6.000000 4.000000 30.000000 192 62630 Male 67.000000 1769670.381000 16.000000 7.000000 5.000000 30.000000 193 62640 Male 66.000000 1601980.555000 16.000000 8.000000 8.000000 30.000000 194 62649 Female 66.000000 1202235.943000 16.000000 5.000000 5.000000 24.000000 195 62671 Male 65.000000 1718959.355000 16.000000 9.000000 8.000000 29.000000 196 62675 Male 67.000000 1614344.536000 18.000000 10.000000 9.000000 28.000000 197 62685 Male 66.000000 1674351.092000 16.000000 7.000000 7.000000 30.000000 198 62691 Male 69.000000 1463215.679000 14.000000 5.000000 5.000000 30.000000 199 62703 Male 65.000000 1499925.709000 15.000000 6.000000 5.000000 30.000000 200 62713 Female 67.000000 1349224.676000 16.000000 6.000000 5.000000 30.000000 201 62749 Female 66.000000 1475632.796000 17.000000 8.000000 8.000000 30.000000 202 62751 Female 65.000000 1391959.555000 16.000000 6.000000 6.000000 30.000000 203 62768 Male 67.000000 1866151.905000 17.000000 8.000000 8.000000 30.000000 204 62770 Female 69.000000 1368067.480000 12.000000 8.000000 6.000000 30.000000 205 62773 Female 67.000000 1495031.529000 18.000000 5.000000 5.000000 30.000000 206 62793 Female 68.000000 1340298.618000 11.000000 7.000000 6.000000 29.000000 207 62841 Male 65.000000 1704084.823000 16.000000 7.000000 6.000000 30.000000 208 62848 Male 66.000000 2011404.650000 18.000000 5.000000 2.000000 30.000000 209 62850 Male 67.000000 1475058.328000 9.000000 4.000000 5.000000 30.000000 210 62858 Female 68.000000 1371172.046000 10.000000 5.000000 4.000000 28.000000 211 62866 Male 67.000000 1436583.851000 17.000000 8.000000 8.000000 30.000000 212 62916 Female 66.000000 1362105.222000 13.000000 8.000000 7.000000 30.000000 213 62920 Female 67.000000 1253512.722000 13.000000 8.000000 8.000000 30.000000 214 62935 Female 68.000000 1352314.380000 16.000000 6.000000 6.000000 30.000000 215 62955 Male 68.000000 1611470.812000 13.000000 5.000000 3.000000 30.000000 216 62965 Female 65.000000 1387007.531000 16.000000 9.000000 9.000000 30.000000 217 62975 Male 65.000000 1715180.341000 17.000000 9.000000 9.000000 30.000000 218 63001 Male 66.000000 1476851.884000 13.000000 7.000000 6.000000 30.000000 219 63010 Female 65.000000 1254643.979000 11.000000 10.000000 8.000000 30.000000 220 63015 Male 68.000000 1614080.724000 16.000000 7.000000 6.000000 30.000000 221 63026 Female 68.000000 1475045.902000 16.000000 6.000000 4.000000 30.000000 222 63028 Female 65.000000 1369741.109000 16.000000 10.000000 8.000000 29.000000 223 63035 Female 66.000000 1358029.770000 15.000000 9.000000 10.000000 30.000000 224 63037 Male 67.000000 1348990.447000 15.000000 6.000000 5.000000 27.000000 225 63040 Female 65.000000 1574339.898000 17.000000 8.000000 10.000000 30.000000 226 63044 Female 65.000000 1263946.095000 12.000000 9.000000 6.000000 29.000000 227 63053 Male 67.000000 1479377.047000 13.000000 5.000000 4.000000 30.000000 228 63056 Male 66.000000 1708241.439000 13.000000 6.000000 5.000000 27.000000 229 63068 Male 66.000000 1829375.836000 16.000000 8.000000 8.000000 30.000000 230 63081 Female 67.000000 1308601.606000 16.000000 8.000000 7.000000 30.000000 231 63121 Male 65.000000 1429924.922000 17.000000 7.000000 7.000000 29.000000 232 63136 Male 65.000000 1358492.433000 13.000000 7.000000 6.000000 30.000000 233 63187 Female 67.000000 1450653.331000 11.000000 7.000000 7.000000 30.000000 234 63194 Male 65.000000 1710824.705000 13.000000 6.000000 4.000000 30.000000 235 63218 Male 67.000000 1740428.847000 14.000000 6.000000 6.000000 28.000000 236 63329 Female 67.000000 1321378.996000 11.000000 4.000000 3.000000 29.000000 237 63348 Female 66.000000 1236582.647000 18.000000 8.000000 10.000000 28.000000 238 63365 Male 68.000000 1303044.067000 15.000000 7.000000 6.000000 30.000000 239 63407 Female 66.000000 1476363.355000 15.000000 8.000000 8.000000 30.000000 240 63411 Male 67.000000 1508417.015000 13.000000 7.000000 4.000000 30.000000 241 63429 Male 66.000000 1498651.310000 16.000000 9.000000 8.000000 30.000000 242 63433 Female 65.000000 1637666.412000 7.000000 5.000000 3.000000 29.000000 243 63434 Male 65.000000 1404102.292000 13.000000 8.000000 6.000000 28.000000 244 63435 Female 68.000000 1290498.840000 9.000000 8.000000 7.000000 30.000000 245 63450 Female 68.000000 1461679.165000 16.000000 6.000000 7.000000 30.000000 246 63470 Male 68.000000 1764842.776000 16.000000 6.000000 5.000000 30.000000 247 63471 Male 66.000000 1626739.875000 18.000000 8.000000 7.000000 30.000000 248 63473 Male 67.000000 1547730.521000 16.000000 8.000000 8.000000 30.000000 249 63490 Female 68.000000 1459100.087000 17.000000 9.000000 8.000000 30.000000 250 63491 Female 69.000000 1203835.666000 11.000000 6.000000 6.000000 30.000000 251 63492 Male 68.000000 1863218.042000 18.000000 6.000000 5.000000 29.000000 252 63534 Female 64.000000 1390281.271000 14.000000 12.000000 12.000000 30.000000 253 63545 Female 65.000000 1549737.502000 15.000000 6.000000 6.000000 29.000000 254 63568 Female 69.000000 1420581.429000 13.000000 10.000000 9.000000 30.000000 255 63575 Male 66.000000 1634842.939000 13.000000 5.000000 5.000000 30.000000 256 63586 Female 67.000000 1282484.920000 14.000000 5.000000 4.000000 30.000000 257 63636 Male 65.000000 1544562.893000 16.000000 7.000000 8.000000 30.000000 258 63637 Male 66.000000 1698490.265000 14.000000 5.000000 3.000000 30.000000 259 63649 Male 66.000000 1629968.231000 16.000000 10.000000 10.000000 30.000000 260 63674 Female 69.000000 1438155.755000 16.000000 8.000000 7.000000 28.000000 261 63693 Female 65.000000 1497686.080000 17.000000 12.000000 10.000000 30.000000 262 63750 Female 65.000000 1479793.142000 9.000000 7.000000 6.000000 29.000000 263 63755 Female 68.000000 1525828.431000 11.000000 8.000000 5.000000 30.000000 264 63766 Male 66.000000 1463306.498000 13.000000 6.000000 6.000000 29.000000 265 63770 Male 67.000000 1887287.792000 16.000000 6.000000 7.000000 29.000000 266 63773 Male 65.000000 1689991.093000 13.000000 4.000000 4.000000 29.000000 267 63801 Female 65.000000 1431885.847000 12.000000 8.000000 7.000000 30.000000 268 63819 Male 64.000000 1498254.663000 11.000000 2.000000 3.000000 30.000000 269 63842 Female 67.000000 1402365.503000 13.000000 6.000000 6.000000 29.000000 270 63860 Female 67.000000 1219557.377000 13.000000 7.000000 6.000000 29.000000 271 63870 Male 67.000000 1416052.154000 4.000000 5.000000 4.000000 24.000000 272 63897 Female 65.000000 1386603.488000 11.000000 6.000000 6.000000 27.000000 273 63909 Female 67.000000 1498120.130000 11.000000 6.000000 5.000000 27.000000 274 63943 Female 68.000000 1391455.784000 11.000000 9.000000 9.000000 29.000000 275 63973 Female 68.000000 1325651.986000 12.000000 8.000000 9.000000 29.000000 276 63977 Female 67.000000 1416606.719000 7.000000 7.000000 6.000000 29.000000 277 63988 Female 66.000000 1797605.141000 12.000000 6.000000 5.000000 30.000000 278 64058 Male 65.000000 1704044.410000 13.000000 6.000000 6.000000 29.000000 279 64060 Female 69.000000 1450753.566000 9.000000 5.000000 4.000000 28.000000 280 64079 Female 68.000000 1537316.156000 15.000000 9.000000 8.000000 30.000000 281 64092 Female 68.000000 1301022.372000 11.000000 8.000000 8.000000 29.000000 282 64098 Male 65.000000 1329477.321000 9.000000 7.000000 5.000000 30.000000 283 64110 Male 69.000000 1590246.364000 11.000000 6.000000 4.000000 29.000000 284 64119 Female 67.000000 1535177.839000 7.000000 4.000000 3.000000 22.000000 285 64123 Female 66.000000 1498207.493000 13.000000 10.000000 10.000000 28.000000 286 64129 Male 68.000000 1924730.604000 16.000000 7.000000 7.000000 29.000000 287 64186 Male 70.000000 1712482.445000 18.000000 8.000000 7.000000 30.000000 288 64206 Female 68.000000 1365808.951000 15.000000 9.000000 11.000000 28.000000 289 64212 Male 66.000000 1689829.583000 11.000000 6.000000 5.000000 29.000000 290 64227 Female 68.000000 1481257.401000 11.000000 10.000000 9.000000 29.000000 291 64243 Male 69.000000 1830633.292000 16.000000 9.000000 11.000000 30.000000 292 64250 Male 66.000000 1755052.307000 14.000000 4.000000 2.000000 28.000000 293 64264 Male 69.000000 1706234.283000 13.000000 7.000000 5.000000 27.000000 294 64297 Female 67.000000 1467399.920000 16.000000 7.000000 6.000000 30.000000 295 64310 Male 69.000000 1367154.364000 16.000000 10.000000 8.000000 30.000000 296 64312 Female 66.000000 1624382.909000 18.000000 9.000000 7.000000 30.000000 297 64318 Male 65.000000 1520397.385000 16.000000 6.000000 5.000000 28.000000 298 64336 Female 67.000000 1298724.449000 11.000000 7.000000 6.000000 30.000000 299 64346 Male 65.000000 1717890.024000 9.000000 5.000000 3.000000 29.000000 300 64350 Male 66.000000 1499622.523000 11.000000 6.000000 8.000000 30.000000 301 64370 Female 67.000000 1461338.787000 14.000000 4.000000 4.000000 27.000000 302 64376 Male 68.000000 1690024.665000 15.000000 7.000000 6.000000 30.000000 303 64387 Male 65.000000 1744917.648000 18.000000 8.000000 9.000000 29.000000 304 64394 Female 69.000000 1229597.988000 11.000000 7.000000 6.000000 30.000000 305 64406 Male 65.000000 1646243.886000 16.000000 7.000000 6.000000 29.000000 306 64415 Male 65.000000 1698708.312000 13.000000 6.000000 2.000000 29.000000 307 64431 Male 69.000000 1637083.254000 13.000000 9.000000 7.000000 30.000000 308 64432 Female 64.000000 1443418.521000 15.000000 7.000000 6.000000 29.000000 309 64469 Female 68.000000 1290981.493000 13.000000 8.000000 9.000000 30.000000 310 64475 Male 64.000000 1381860.827000 16.000000 7.000000 10.000000 29.000000 311 64488 Female 66.000000 1672865.932000 13.000000 7.000000 4.000000 30.000000 312 64504 Male 68.000000 1648596.347000 14.000000 7.000000 5.000000 29.000000 313 64531 Female 64.000000 1302074.735000 11.000000 6.000000 6.000000 30.000000 314 64537 Female 64.000000 1354561.221000 15.000000 6.000000 6.000000 30.000000 315 64542 Female 65.000000 1525192.555000 16.000000 8.000000 6.000000 29.000000 316 64552 Female 67.000000 1334914.352000 12.000000 11.000000 8.000000 30.000000 317 64590 Male 66.000000 1496597.893000 16.000000 3.000000 3.000000 29.000000 318 64592 Female 68.000000 1617036.550000 15.000000 7.000000 7.000000 30.000000 319 64596 Male 66.000000 1629483.286000 17.000000 9.000000 8.000000 30.000000 320 64620 Male 69.000000 1766745.351000 13.000000 9.000000 7.000000 30.000000 321 64625 Male 67.000000 1644994.323000 13.000000 7.000000 6.000000 30.000000 322 64640 Male 64.000000 1600545.244000 16.000000 8.000000 7.000000 30.000000 323 64657 Female 66.000000 1430361.870000 11.000000 6.000000 6.000000 30.000000 324 64668 Female 66.000000 1446232.164000 15.000000 4.000000 3.000000 30.000000 325 64680 Male 66.000000 1887747.269000 18.000000 7.000000 4.000000 30.000000 326 64691 Male 67.000000 1685960.536000 11.000000 7.000000 7.000000 29.000000 327 64706 Male 69.000000 1793973.949000 18.000000 4.000000 3.000000 30.000000 328 64734 Male 67.000000 1629690.895000 11.000000 4.000000 3.000000 26.000000 329 64745 Female 66.000000 1322600.140000 11.000000 7.000000 7.000000 30.000000 330 64764 Female 66.000000 1310599.227000 14.000000 7.000000 7.000000 30.000000 331 64781 Male 66.000000 1794821.962000 18.000000 10.000000 7.000000 30.000000 332 64797 Male 66.000000 1473183.681000 15.000000 7.000000 4.000000 30.000000 333 64798 Male 68.000000 1559929.239000 15.000000 7.000000 3.000000 30.000000 334 64806 Male 67.000000 1730730.577000 16.000000 8.000000 5.000000 30.000000 335 64812 Male 66.000000 1669404.085000 11.000000 7.000000 8.000000 30.000000 336 64818 Male 66.000000 1342168.590000 17.000000 9.000000 10.000000 30.000000 337 64824 Female 65.000000 1393747.008000 11.000000 6.000000 5.000000 29.000000 338 64829 Male 67.000000 1730913.954000 14.000000 8.000000 6.000000 29.000000 339 64843 Female 67.000000 1526727.537000 16.000000 9.000000 7.000000 29.000000 340 64867 Female 68.000000 1343972.077000 13.000000 6.000000 4.000000 30.000000 341 64868 Male 68.000000 1732320.474000 17.000000 7.000000 6.000000 30.000000 342 64876 Male 68.000000 1953231.118000 9.000000 5.000000 4.000000 28.000000 343 64884 Female 68.000000 1513911.960000 16.000000 7.000000 7.000000 30.000000 344 64886 Male 69.000000 2021436.283000 16.000000 6.000000 0.000000 30.000000 345 64897 Female 68.000000 1290542.610000 14.000000 10.000000 10.000000 30.000000 346 64899 Male 65.000000 1555221.638000 13.000000 4.000000 5.000000 30.000000 347 64910 Male 65.000000 1649738.656000 16.000000 6.000000 5.000000 30.000000 348 64913 Female 68.000000 1198930.054000 15.000000 12.000000 12.000000 30.000000 349 64937 Male 68.000000 1532732.648000 13.000000 5.000000 6.000000 30.000000 350 64947 Female 65.000000 1321828.257000 9.000000 9.000000 8.000000 28.000000 351 64961 Female 68.000000 1549415.444000 13.000000 8.000000 6.000000 30.000000 352 64987 Male 67.000000 1431757.627000 16.000000 11.000000 11.000000 30.000000 353 64997 Male 68.000000 1631599.101000 18.000000 5.000000 5.000000 30.000000 1 gender discrete 2 1 Male 2 Female 2 age continuous 0 3 icv continuous 0 4 educ continuous 0 5 imm_rec continuous 0 6 delrec continuous 0 7 mmse continuous 0 Continuous Factors: Mean: StdDev: age 66.571 1.435 icv 1532584.460 178864.555 educ 14.254 2.637 imm_rec 7.263 1.940 delrec 6.412 2.250 mmse 29.398 1.017 Number of subjects: 354 Number of factors: 7 (1 discrete, 6 continuous) Number of classes: 2 Number of regressors: 14 ============================================================ SUBJECTS_DIR is '/media/storage2/proc/freesurfer/60_w2/checked' Avg-Intercept ----------------------- Does the average thickness differ from zero? 1.000 1.000; Diff-Male-Female-Intercept ----------------------- Does the average thickness differ between Male and Female? 1.000 -1.000; ninputs = 354 Checking inputs nframestot = 354 Allocing output Writing to /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/y.mgh gdfReadHeader: reading /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/qdec.fsgd INFO: demeaning continous variables Continuous Variable Means (all subjects) Class Means of each Continuous Variable 1 genderMale 2 genderFemale INFO: gd2mtx_method is dods Reading source surface /media/storage2/proc/freesurfer/60_w2/checked/fsaverage/surf/lh.white Number of vertices 163842 Number of faces 327680 Total area 65416.648438 AvgVtxArea 0.399267 AvgVtxDist 0.721953 StdVtxDist 0.195470 $Id: mri_glmfit.c,v 1.138.2.1 2007/09/12 15:38:19 nicks Exp $ cwd /media/storage2/proc/freesurfer/60_w2/checked cmdline mri_glmfit --y /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/y.mgh --fsgd /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/qdec.fsgd --glmdir /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled --surf fsaverage lh --C /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/contrasts/Avg-Intercept.mat --C /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/contrasts/Diff-Male-Female-Intercept.mat sysname Linux hostname mri-lab machine x86_64 user u3184049 FixVertexAreaFlag = 1 UseMaskWithSmoothing 1 OneSampleGroupMean 0 y /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/y.mgh logyflag 0 usedti 0 FSGD /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/qdec.fsgd glmdir /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled DoFFx 0 Creating output directory /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled Loading y from /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/y.mgh Matrix condition is 1 Pruning voxels by frame. Found 163842 voxels in mask Saving mask to /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/mask.mgh search space = 82220 DOF = 352 Starting fit and test 10% 20% 30% 40% 50% 60% 70% 80% 90% 100% Fit completed in 0.09515 minutes Computing spatial AR1 on surface Residual: ar1mn=0.995315, ar1std=0.001846, gstd=5.267555, fwhm=12.404143 Writing results Avg-Intercept maxvox sig=1e+10 F=9655.56 at index 0 0 0 seed=1204929318 Diff-Male-Female-Intercept maxvox sig=-9.97703 F=44.357 at index 34529 0 0 seed=1204929318 mri_glmfit done ninputs = 2 Checking inputs nframestot = 2 Allocing output Writing to /media/storage2/proc/freesurfer/60_w2/checked/qdec/Untitled/contrasts.sig.mgh WARNING: Marker for class genderMale was invalid. WARNING: Color for class genderMale was invalid. WARNING: Marker for class genderFemale was invalid. WARNING: Color for class genderFemale was invalid. Segmentation fault (core dumped)