Label each of the following statements with either mitosis or meiosis. Fill in the gaps:

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1 AQA Boloy Unt 46: Inrtn, Vrton n Evoluton - Founton 1 Ll o t ollown sttmnts wt tr mtoss or moss Prous ntl lls Prous non-ntl lls Fll n t ps: Gmts on t to rstor t norml numr o romosoms T nw ll tt s prou vs y, so t numr o lls As t mryo vlops, t lls Ll t rm low wt t kywors: ll, nulus, romosom, n, DNA T rm sows t nrtn o yst ross n on mly k Dutr lls v on st o romosoms Dutr lls v two sts o romosoms Inlus on nulr vson Inlus two nulr vsons Prous 4 utr lls Prous 2 utr lls Wt r t nms o t ml n ml mts n plnts? n nmls? Fll n t ps: rprouton nvolvs only on prnt n no uson o Only s nvolv, so tr s no mxn o nt normton T osprn r (ntlly ntl) ml A C E ml D B Mt o t kywors wt ts nton Kywors: nom, mt, romosom, n, lll, omnnt, rssv, omozyous, trozyous, notyp, pnotyp T ntr nt mtrl o n ornsm T llls prsnt n n nvul or prtulr rtrst A ston o DNA tt os or prtulr squn o mno s tt mks sp protn Only ontrols t pysl rtrst t s prsnt on ot romosoms A rnt orm or vrnt o n Two ntl llls or rtrst Drnt llls or rtrst Foun n t nulus, ty r m rom lon DNA moluls n pss rom prnt to osprn T sx lls (sprm n lls), w ontn on st o nt normton T pysl pprn o n nvul or prtulr rtrst Controls t rtrst, vn t s only prsnt on on romosom How mny strns os DNA v? Gv tr rsons t s mportnt to stuy t umn nom Gv n xmpl o rtrst us y snl n Wt uss most rtrsts? A womn wt polytyly s trozyous or t polytyly lll T womn mrrs mn wo os not v polytyly Drw punnt squr rm n lt t possl osprn notyps tt woul v polytyly Us t symol A or t omnnt lll n t symol or t rssv lll Us t symol N or t lll or norml lt, n t symol n or t lll or yst ross Wt s t notyp or prson A? How o you know? Prson A s prnnt wt tr tr l Drw nt rm to sow t prolty o t l vn yst ross How mny romosoms r n ll B? Wt s t pross ll tt prous ll C rom ll A? How mny romosoms r n ll C? How mny romosoms r n ll E? Wt s t pross tt prous ll E ll? Wt s t nm o t strutur o DNA? How mny prs o romosoms os n ornry umn oy ll ontn? vst twnklom

2 AQA Boloy Unt 46: Inrtn, Vrton n Evoluton - Founton 2 W sx romosoms o umn mls rry? W sx romosoms o umn mls rry? Gv n xmpl o vrton twn nvuls tt s t y nts (nt vrton) T nol lzrs r oun on t Crn slns Tr r roun 150 sps o t lzr w volv rom snl sps tt olons t slns Wt s sltv rn? Us punnt squr to sow t nrtn o sx mts Wt s t n tt prnny prous oy? Wt r t nts o mryo srnn? Wt r t rsks o mryo srnn? Gv n xmpl o vrton twn nvuls tt s t y t nvronmnt (nvronmntl vrton) Gv n xmpl o vrton twn nvuls tt s t y omnton o nt n nvronmntl vrton Fll n t ps our ontnuously n v rs to nw vrnts n t o sps Most vrnts v no t on t Somtms vrnt s rmul n mns t nvul s lss lkly to Vry rrly t mt prou pnotyp tt s nl, mkn t nvul ttr to t nvronmnt Us t kywors to lp xpln ow two sps o t nol lzr, oun on rnt Crn slns, oul v volv rom ommon nstor Kywors: sussully ntrr, sprt, nvronmntl ontons, survv, osprn, orpl solton, rprou, vrton, pt, nturl slton, llls T nstrl popultons o nol lzrs wr us ty lv on rnt slns Ts s ll E nvronmnt woul v rnt Dsr ow rmrs woul us sltv rn to prou ows tt mk lots o mlk Fll n t ps 1 Pk prnts tt ; 2 ; 3 rom t osprn, pk 4 ; ; 5 rpt or untl ll o t osprn Gv our otr xmpls o rtrsts tt mt osn or sltv rn n plnts or nmls Wt s t nt o sltv rn? Wt r t onom onrns surrounn mryo srnn? Wt s voluton? Fll n t ps A n t rtrsts o populton ovr trou pross o Ts my rsult n t ormton o nw Wn t rst smpl l orms vlop? Tr ws nt n populton T nvuls n populton tt wr ttr to tos ontons woul n Ts s ll T or t nl pnotyps wr pss to tr Wt s rsk o sltv rn? Wt vn o w v or voluton? Evntully, t two popultons woul so rnt ty oul not vst twnklom

3 AQA Boloy Unt 46: Inrtn, Vrton n Evoluton - Founton Answrs 3 Wt s nt nnrn? Wt r ossls? MRSA s rsstnt to ntots T rp sows ow t numr o MRSA ts s n ovr t lst 15 yrs Gv n xmpl o ow nt nnrn s us n plnts Gv n xmpl o ow nt nnrn s us n trl lls Fll n t ps to omplt t tr wys ossls my orm 1 From prts o ornsms tt v not us on or mor o t ontons or y r 2 Wn prts o t ornsm r y s ty y 3 As prsrv o ornsms, su s, n Ts s ossl o t prstor r Aroptryx Aroptryx s now xtnt, v som tors tt oul ontrut to sps xtnton Wt r GM rops? Wt n w lrn rom ossls? Dsr t trn n t t From 1993 to 2006 Wt r t nts o GM rops? Fll n t ps 1 Ty n rsstnt to, or 2 Ty v nrs 3 Ty n nnr to row n mor ult Wy n sntsts not rtn out ow l n on Ert? Wy n tr volv rply? Atr 2006 Msurs wr put nto pl to prvnt t spr o ntot rsstnt tr Wt r t onrns out nt nnrn? Fll n t ps to xpln ow tr n om rsstnt to ntots How ts t otors sons to prsr ntots? Complt t oxs to sow t wy Lnnus lss lvn tns Knom Cml nlyss l Crl Wos to pt t systm w us or lsston Wt r t omns o s tr omn systm ll? Fll n t ps 1, prmtv tr wo lv n xtrm nvronmnts; 2 ; 3, w nlus p,, p n Som rs tt prou nw strns my us t strn to om to ntots Btr r no lonr y ntots so ty n, ts nrss t populton o ntot rsstnt tr T rsstnt strn s us ty r not no tv twn popl to t n tr s Wt must ptnts n to o wn ty r prsr ntots? Gv two wys tt osptls ru t spr o trl ntons Wy s t vlopmnt o nw ntots not lkly to kp up wt nw strns o tr? How r ornsms nm? vst twnklom

4 AQA Boloy Unt 46: Inrtn, Vrton n Evoluton - Founton Answrs 1 Ll o t ollown sttmnts wt tr mtoss or moss Prous ntl lls mtoss Prous non-ntl lls moss Fll n t ps: Gmts on t rtlston to rstor t norml numr o romosoms T nw ll tt s prou vs y mtoss, so t numr o lls nrss As t mryo vlops, t lls rntt Ll t rm low wt t kywors: ll, nulus, romosom, n, DNA nulus romosom DNA T rm sows t nrtn o yst ross n on mly k Dutr lls v on st o romosoms moss Dutr lls v two sts o romosoms mtoss Inlus on nulr vson mtoss Inlus two nulr vsons moss Prous 4 utr lls moss Prous 2 utr lls mtoss Wt r t nms o t ml n ml mts n plnts? polln lls n lls n nmls? sprm lls n lls Fll n t ps: Asxul rprouton nvolvs only on prnt n no uson o mts Only mtoss s nvolv, so tr s no mxn o nt normton T osprn r lons (ntlly ntl) ml How mny romosoms r n ll B? 46 Wt s t pross ll tt prous ll C rom ll A? moss How mny romosoms r n ll C? 23 How mny romosoms r n ll E? 46 Wt s t pross tt prous ll E ll? rtlston A C E ml D B Mt o t kywors wt ts nton Kywors: nom, mt, romosom, n, lll, omnnt, rssv, omozyous, trozyous, notyp, pnotyp T ntr nt mtrl o n ornsm nom T llls prsnt n n nvul or prtulr rtrst notyp A ston o DNA tt os or prtulr squn o mno s tt mks sp protn n Only ontrols t pysl rtrst t s prsnt on ot romosoms rssv A rnt orm or vrnt o n lll Two ntl llls or rtrst omozyous Drnt llls or rtrst trozyous Foun n t nulus, ty r m rom lon DNA moluls n pss rom prnt to osprn romosom T sx lls (sprm n lls), w ontn on st o nt normton mt T pysl pprn o n nvul or prtulr rtrst pnotyp Controls t rtrst, vn t s only prsnt on on romosom omnnt How mny strns os DNA v? two Wt s t nm o t strutur o DNA? oul lx How mny prs o romosoms os n ornry umn oy ll ontn? 23 ll Gv tr rsons t s mportnt to stuy t umn nom 1 To lp sr or ns tt us ss 2 It lps to unrstn n vlop trtmnts or nrt sorrs 3 It s us to tr umn mrton pttrns rom t pst A womn wt polytyly s trozyous or t polytyly lll T womn mrrs mn wo os not v polytyly Drw punnt squr rm n lt t possl osprn notyps tt woul v polytyly Us t symol A or t omnnt lll n t symol or t rssv lll A A A n Gv n xmpl o rtrst us y snl n Som xmpls: y olour, r-rn olour lnnss, polytyly, yst ross, tonu rolln, tt rlos, rkls, mpls, ur olour n m Wt uss most rtrsts? Multpl ns ntrtn 1 mrk or orrt prntl notyps 1 or omplt punnt squr 1 or ltn t osprn wt polytyly Us t symol N or t lll or norml lt, n t symol n or t lll or yst ross Wt s t notyp or prson A? Nn How o you know? Ty on t v yst ross, ut ty v pss on yst ross lll to tr utr, so ty must rry t lll Ty on t sur rom t ss tmslvs, so ty must rry t norml, omnnt lll, ty r tror trozyous Prson A s prnnt wt tr tr l Drw nt rm to sow t prolty o t l vn yst ross N n N NN Nn n Nn nn 1 mrk or orrt prntl notyps 1 or omplt punnt squr 1 or ltn t notyp wt yst ross 1 or t orrt prolty 25% / ¼ / 025 /1 n 4 osprn v yst ross vst twnklom

5 AQA Boloy Unt 46: Inrtn, Vrton n Evoluton - Founton Answrs 2 W sx romosoms o umn mls rry? XX W sx romosoms o umn mls rry? XY Us punnt squr to sow t nrtn o sx mts X Wt s t n tt prnny prous oy? 50% / ½ X X XX XX Y XY XY Wt r t nts o mryo srnn? It llows popl to mk os out wtr ty v l wt n nrt sorr It lso mns popl n prpr or lookn tr l wt n nrt sorr Wt r t rsks o mryo srnn? Tt t wll us msrr Tt t wll v ls-postv or ls-ntv rsult Wt r t onom onrns surrounn mryo srnn? Srnn s xpnsv so t s not urrntly or to vryon Howvr, l s orn wt nt sorr, t n xpnsv or soty to prov t ltr n support n Gv n xmpl o vrton twn nvuls tt s t y nts (nt vrton) Som xmpls: y olour, mpls, nrt ss, nturl r olour, rlos, nturl skn olour, nr Gv n xmpl o vrton twn nvuls tt s t y t nvronmnt (nvronmntl vrton) Som xmpls: lnu, rlon, srs, llns, lty to ply n nstrumnt Gv n xmpl o vrton twn nvuls tt s t y omnton o nt n nvronmntl vrton Som xmpls: t, wt, IQ Fll n t ps Muttons our ontnuously n v rs to nw vrnts n t ns o sps Most vrnts v no t on t pnotyp Somtms vrnt s rmul n mns t nvul s lss lkly to survv Vry rrly t mt prou pnotyp tt s nl, mkn t nvul ttr pt to t nvronmnt Wt s voluton? Fll n t ps A n n t nrt rtrsts o populton ovr tm trou pross o nturl slton Ts my rsult n t ormton o nw sps Wn t rst smpl l orms vlop? 3 llon yrs o Wt vn o w v or voluton? 1 ossls 2 ntot rsstn n tr T nol lzrs r oun on t Crn slns Tr r roun 150 sps o t lzr w volv rom snl sps tt olons t slns Us t kywors to lp xpln ow two sps o t nol lzr, oun on rnt Crn slns, oul v volv rom ommon nstor Kywors: sussully ntrr, sprt, nvronmntl ontons, survv, osprn, orpl solton, rprou, vrton, pt, nturl slton, llls T nstrl popultons o nol lzrs wr sprt us ty lv on rnt slns Ts s ll orpl solton E nvronmnt woul v rnt nvronmntl ontons Tr ws nt vrton n populton T nvuls n populton tt wr ttr pt to tos ontons woul survv n rprou Ts s ll nturl slton T llls or t nl pnotyps wr pss to tr osprn Evntully, t two popultons woul so rnt ty oul not sussully ntrr Wt s sltv rn? T pross y w umns r plnts n nmls or prtulr nt rtrsts Dsr ow rmrs woul us sltv rn to prou ows tt mk lots o mlk Fll n t ps 1 Pk prnts tt prou lots o mlk; 2 r ts prnts totr; 3 rom t osprn, pk tos tt prou t most mlk; 4 r ts totr; 5 rpt or mny nrtons untl ll o t osprn prou lots o mlk Gv our otr xmpls o rtrsts tt mt osn or sltv rn n plnts or nmls 1 Dss rsstn n plnts 2 Anmls tt prou mor mt 3 Domst nmls wt ntl ntur 4 Lr or unusul lowrs Wt s t nt o sltv rn? It prous ornsms tt r usul to us n mprovs our oo prouton Wt s rsk o sltv rn? It n l to nrn w oul mk r pron to ss or nrt ts It rus t numr o llls n populton, n ts mns t populton s lss lkly to op tr s n n t nvronmnt (lk lmt n or nw ss) vst twnklom

6 AQA Boloy Unt 46: Inrtn, Vrton n Evoluton - Founton Answrs 3 Wt s nt nnrn? Gns n ut out o on ornsm n nsrt nto t nom o notr ornsm to v sr rtrst Gv n xmpl o ow nt nnrn s us n plnts To prou plnts tt r rsstnt to ss or prou r ruts Gv n xmpl o ow nt nnrn s us n trl lls To prou tr tt mk umn nsuln to trt ts Wt r ossls? T rmns o ornsms rom mllons o yrs o, w r oun n roks Fll n t ps to omplt t tr wys ossls my orm 1 From prts o ornsms tt v not y us on or mor o t ontons or y r snt 2 Wn prts o t ornsm r rpl y mnrls s ty y 3 As prsrv trs o ornsms, su s ootprnts, urrows n rootlt trs Ts s ossl o t prstor r Aroptryx Aroptryx s now xtnt, v som tors tt oul ontrut to sps xtnton MRSA s rsstnt to ntots T rp sows ow t numr o MRSA ts s n ovr t lst 15 yrs Wt r GM rops? Crops tt v tr ns mo y nt nnrn Wt r t nts o GM rops? Fll n t ps 1 Ty n rsstnt to nst ttk, rs or ss 2 Ty v nrs yls 3 Ty n nnr to row n mor ult lmts Wt r t onrns out nt nnrn? 1 W n t sur wt ts GM rops wll v on popultons o wl lowrs n nsts 2 Som popl r onrn tt w on t know wt ts ty my v on umn lt 3 Som worry tt t my l to popl wntn to mnpult t ns o umns to prou snr s Complt t oxs to sow t wy Lnnus lss lvn tns Knom pylum lss orr mly nus sps How r ornsms nm? By t noml systm o nus n sps Wt n w lrn rom ossls? How ornsms v n ovr lon pro o tm Wy n sntsts not rtn out ow l n on Ert? Mny rly l orms wr sot o, so lt w trs n Most trs v n stroy y orpl tvty Cml nlyss l Crl Wos to pt t systm w us or lsston Wt r t omns o s tr omn systm ll? Fll n t ps 1 Ar, prmtv tr wo lv n xtrm nvronmnts; 2 tr; 3 ukryot, w nlus protsts, un, plnts n nmls 1 nw prtors 2 ttr ompttors 3 tstrop vnt ( voln rupton, mtor) 4 ns to t nvronmnt ovr tm 5 lk o oo 6 nw sss Wy n tr volv rply? Ty rprou t st rt Fll n t ps to xpln ow tr n om rsstnt to ntots Muttons rs tt prou nw strns Som muttons my us t strn to om rsstnt to ntots Btr r no lonr kll y ntots so ty survv n rprou, ts nrss t populton o ntot rsstnt tr T rsstnt strn s spr twn popl us ty r not mmun to t n tr s no tv trtmnt Wy s t vlopmnt o nw ntots not lkly to kp up wt nw strns o tr? Fnn nw ntots s slow pross tt osts lot o mony Dsr t trn n t t From 1993 to 2006 t numr o ts u to MRSA nrss rom ~450 to ~2150 Atr 2006 t numr o ts rom MRSA strts to rs n rs ~650 y 2011 Msurs wr put nto pl to prvnt t spr o ntot rsstnt tr How ts t otors sons to prsr ntots? Dotors only prsr ntots wn ty wr rlly n, not or trtn non-srous or vrl ntons Wt must ptnts n to o wn ty r prsr ntots? Complt tr ours o ntots so ll tr r kll n non survv to mutt n orm rsstnt strns Gv two wys tt osptls ru t spr o trl ntons Ptnts wt ntot rsstnt tr r solt rom otr ptnts Inrs normton out nwsn s prov or st n vstors Alool l s prov trouout osptls vst twnklom

e Describe the structure of DNA. bases pair up.

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