5/17/2016. Study of patterns in the distribution of organisms across space and time
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1 Old Fossils 5/17/2016 Ch.16-4 Evidnc of Evoluion Biogogphy Ag of Eh / Fossil cod Anomy / Embyology Biochmicls Obsving / Tsing NS fis-hnd Sudy of pns in h disibuion of ognisms coss spc nd im Includs obsvion of h: living nd xinc ognisms h gologic nd nvionmnl condiions Sudy of pns in h disibuion of ognisms coss spc nd im Thinking Dwin Closly ld bu Diffn (Glpgos finchs) Du o diffn nvionmnl/slciv pssus Disnly ld bu Simil (Flighlss Bids) Diffn s, simil slciv pssus Sudy of pns in h disibuion of ognisms coss spc nd im Pl conics (coninnl dif) nd fossil mins illus how gn pools hv bn shd, nd vnully isold, ov im Psn my Rliv Ding Fossils of old ognisms found in low lys (s of sdimny ock) 1
2 Old Fossils 5/17/2016 Tchniqu comping h popoion of diociv o sbl isoops o clcul h g of smpl Rdiocbon Cbon-14 hs hlf-lif of 5730 ys Usful fo ding ognisms 60,000 Hlf-lif Tim quid fo hlf of ny diociv lmn o dcy ino noh lmn (xmpl of xponnil dcy) Old smpls qui oh mhods K/A o A/A (1.26 billion) & U/Pb (4.47 billion) common (Th mny ohs, including Rb/S, Sm/Nd, Lu/Hf) Us minl conn in ock lys (fqunly volcnic) o dmin g of ock All gs show simil suls wihin nlyicl o (gdlss of minl, mhod, lmnl hlf-lif, s lb, smpl locion) Old smpls qui oh mhods K/A o A/A (1.26 billion) & U/Pb (4.47 billion) common (Th mny ohs, including Rb/S, Sm/Nd, Lu/Hf) Us minl conn in ock lys (fqunly volcnic) o dmin g of ock Indic Eh is ~4.5 billion ys old Ags of ognisms cn b indicly clculd Avin-lik - Wishbon - Fligh Fhs - Wings - Opposbl Big To - Elongd, Bckwd Pubis Inmdi (Tnsiionl) spcis Spcis h fom sis of sps cing voluion of modn spcis fom xinc ncsos Typiclly show is common o boh h ncsl nd dscndn goups Rpil Bid Dinosu-lik - Shp Th - Th Fings w/ Clws - Long, Bony Til - Hypxnding 2 nd To - Fhs (Wmh) Gnus Achyopyx 2
3 Blnop 1.6 m 1.25 m Tokhi Aiocus 1.0 m Whls Gogicus Doudon Hoss 0.6 m Ambulocus Pkicus 0.4 m Homologous Sucus Fus h simil in sucu bu hv diffn Homologous Sucus Fus h simil in sucu bu hv diffn Evidnc of common ncsy Du o sm gns, diffn slciv pssus Homologous Sucus Fus h simil in sucu bu hv diffn Diff fom Anlogous Sucus Diffn in sucu bu hving common funcion (bid & b wings) No vidnc of common ncsy (bu dos show how slciv pssus cn ld o simil foms) Vsigil Sucus Inhid sucu hving los mos o ll of is oiginl funcion Du o slciv pssus Why? Finss unffcd, NS dosn c 3
4 W h Ely vb mbyos dvlop similly Sm goups of mbyonic clls dvlop in sm od nd in simil pn h d i f f n o g n i s m s? Gnic Cod All living clls us infomion codd in DNA nd RNA (o cy info & dic poin synhsis) Cod is nly idnicl hough ll kingdoms Homologous Molculs Poins lik cyochom c (p of cllul spiion) Hox gns (dmin hd-o-o xis) Mo similiis o squncs indic spcis mo closly ld (lss im o ccumul muions) Glpgos Finchs Obsving & coding bk-siz d Viion in populion incss liklihood of spcis dping nd suviving Anibioic Rsisnc Obsvbl in bci ody Old nibioics (pnicillin) my fil o funcion s hy onc did Rquis nw, diffn funcioning nibioics fo h sm sul 4
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