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Genetic diversity assessment of east
African finger millet and cost-effective
  development of new SSR markers

Santie de Villiers, Kassahun Tesfaye, Emmarold Mneney, Mathews Dida, Patrick
Okori, Vincent Njunge, Annis Saiyiorri, Santosh Deshpande, Katrien Devos, Davis
Gimode, Dagnachew Lule, Isaac Dramadri, Ismail Mohamed and Damaris Odeny




           First Bio-Innovate Regional Scientific Conference
           United Nations Conference Centre (UNCC-ECA)
             Addis Ababa, Ethiopia, 25-27 February 2013
Project Partners
ICRISAT: Santie de Villiers, Vincent Njunge,
Annis Saiyiorri, Santosh Deshpande, Davis
Gimode, Damaris Odeny

AAU: Kassahun Tesfaye, Dagnachew Lule

MARI: Emmarold Mneney, Ismail Mohamed

Makerere: Patrick Okori, Isaac Dramadri

Maseno: Mathews Dida

UGA: Katrien Devos
Combined abstracts
 ‘Genetic diversity assessment of east African
finger millet germplasm using SSR genotyping’
                           and
‘Employing next generation sequencing technology for
  cost-effective development of new SSR markers for
                      finger millet’
Outline
• Microsatellite genotyping for
  genetic diversity assessment
• Generation of new molecular
  tools for marker assisted
  breeding
• Capacity building
• Challenges and opportunities
Molecular markers
• Characters which inheritance can be followed at
  morphological, biochemical or DNA level.
• We use markers to obtain information about the
  genetics of traits of interest
• Examples
  – Morphological trait (such as seed or flower color)
  – Protein (storage or structural proteins and isozymes)
  – Identifiable piece of DNA sequence
• Found at specific locations of the genome and
  transmitted by the standard laws of inheritance
  from one generation to the next
• Can be used to identify and track particular
  genes in an experimental cross
Finger millet
Microsatellite genotyping for to determine
 genetic relatedness or diversity
  Optimised sampling strategy
     • Single sample per accession
     • Bulked samples of 3 to 5 individuals, leaves or DNA
  Finger millet is >95% inbred, very little variation
    expected at DNA level
  Single or bulked samples can be used
Genotyping markers optimization
• Tested 83 available UGEP markers; 57 worked well
• Identified set of 20 - 30 SSRs
• Ranked according to:
Polymorphic information content (PIC)
No of alleles at each locus and how well represented
Ease to work with
• 20 markers previously selected by GCP are not the best for
  African germplasm; only 2 fall within the 20 best markers
• Publication
Optimised SSR markers for genotyping
      Marker Name           Primer F                Primer R          Allele No   Availability   PIC    GCP
 1    UGEP24        GCCTTTTGATTGTTCAACTCG    CGTGATCCCTCTCCTCTCTG        14          0.98        0.88     
 2    UGEP53        TGCCACAACTGTCAACAAAAG    CCTCGATGGCCATTATCAAG        9           0.98        0.87     
 3    UGEP84        GGAACTTCCGTCAGTCCTTG     TGGGGAAGGTGTTGAATCTC        8           0.98        0.82     
 4    UGEP27        TTGCTCTGAGGTTGTGTTGC     TCAAGCATAGTGCCCTCCTC        8           0.98        0.81     
 5    UGEP98         GTCTTCCATTTGCAGCAACC     ACGCGTACTGACGTGCTTG        9           0.93        0.81     
 6    UGEP95        AGGGGACGCTTGGTTATTTG     GCCTCTACCTGTCTCCGTTG        8           0.98        0.79     
 7    UGEP64        GTCACGTCGATTGGAGTGTG     TCTCACGTGCATTTAGTCATTG      11          0.94        0.78     
 8    UGEP33         TAGCCCGTTTGCTTGTTTTG    AAGGCCCTAGAACGTCAAGC        7           0.93        0.76     
 9    UGEP67        CTCCTGATGCAAGCAAGGAC     AGGTGCCGTAGTTTGTGCTC        8           0.96        0.76     
 10   UGEP106        AATTCCATTCTCTCGCATCG    TGCTGTGCTCCTCTGTTGAC        7           0.89        0.75     
 11   UGEP110        AAATTCGCATCCTTGCTGAC    TGACAAGAGCACACCGACTC        6           0.86        0.74     
 12   UGEP57        CCATGGGTTCATCAAACACC      ACATGAGCTCGCGTATTGC        6           0.92        0.73     
 13   UGEP96        TAATGGGCCTAATGGCAATG     CAAAATCCGAGCCAAGATTC        8           0.64        0.72     
 14   UGEP66        CAGATCTGGGTAGGGCTGTC      GATGGTGGTTCATGCCAAC        9           0.93        0.72     
 15   UGEP46        CAAGTCAAAACATTCAGATGG    CCACTCCATTGTAGCGAAAC        6           0.83        0.7      
 16   UGEP79         CCACTTTGCCGCTTGATTAG    TGACATGAGAAGTGCCTTGC        8           0.97        0.7      
 17   UGEP20        GGGGAAGGCAATGATATGTG     TTGGGGAGTGCCAACAATAC        5             1         0.69     
 18   UGEP12         ATCCCCACCTACGAGATGC     TCAAAGTGATGCGTCAGGTC        7           0.97        0.69   GCP
 19   UGEP73        GGTCAAAGAGCTGGCTATCG     ACCAGAACCGAATCATGAGG        6           0.92        0.67     
 20    UGEP5        TGTACACAACACCACACTGATG    TTGTTTGGACGTTGGATGTG       4           0.91        0.66   GCP
 21    UGEP15        AAGGCAATCTCGAATGCAAC     AAGCCATGGATCCTTCCTTC       6           0.98         0.6   GCP
 22    UGEP56        CTCCGATACAGGCGTAAAGG      ACCATAATAGGGCCGCTTG       4           0.98        0.54   GCP
 23    UGEP107      TCATGCTCCATGAAGAGTGTG     TGTCAAAAACCGGATCCAAG       9           0.57        0.52   GCP
 24    UGEP65        AGTGCTAGCTTCCCATCAGC     ACCGAAACCCTTGTCAGTTC       5           0.31        0.46   GCP
 25    UGEP31        ATGTTGATAGCCGGAAATGG     CCGTGAGCCTCGAGTTTTAG       4           0.97        0.45   GCP
 26     UGEP3       CCACGAGGCCATACTGAATAG     GATGGCCACTAGGGATGTTG       3           0.94         0.4   GCP
 27    UGEP68       CGGTCAGCATATAACGAATGG     TCATTGATGAATCCGACGTG       3           0.93        0.38   GCP
 28    UGEP81        AAGGGCCATACCAACACTCC     CACTCGAGAACCGACCTTTG       3           0.97        0.35   GCP
 29    UGEP18        TTGCATGTGTTGCTTTTTGC    TGTTCTTGATTGCAAACTGATG      3           0.88        0.31   GCP
 30    UGEP102       ATGCAGCCTTTGTCATCTCC     GATGCCTTCCTTCCCTTCTC       4            0.8        0.19   GCP
Finger millet genotyping
Assembly and evaluation of FM resources
Country received from   Cultivated   Wild
Ethiopia                   287       72
Uganda                     105
Tanzania                   198        5
Kenya                      150
Wild (all countries)                 29
Total                      740       106
HOPE (ICRISAT)             337
Egerton University         225
Total                     1302
Diversity assessment - genotyping
SSR/microsatellite genotyping
  – Analysed 1307 cultivated accessions (from Bio-Innovate
    and HOPE projects)
  – Used 20 SSR markers, generated > 26 000 data points
  – Wild germplasm (106 accessions) data being finalised
Post-graduate students at ICRISAT-Nairobi (3 months)
  Ethiopia (Dagnachew Lule), Uganda (Isaac Dramadri) and
    Tanzania (Ismail Mohamed)
  – DNA extraction
  – Genotyping
  – Data analysis
  – Training course (CAPACITATE)
     Publication write-up
Diversity assessment continued
Results
  All data sets <10% missing data;
  Analysed with genetic diversity software (PowerMarker,
  DARwin, Arlequin, STRUCTURE)
  Combined data: PIC ranged from 0.47 to 0.95 (mean 0.81)

Publication strategy
  Cultivated for each country
  Wild germplasm across countries
     5/6 from BioInnovate, 2 from HOPE
Genetic diversity results
Ethiopia                   Kenya




Tanzania                Uganda
Developing additional molecular tools for
       marker-assisted breeding
    SSR markers – status and potential
– Only 82 published SSR markers available
– Basic genetic map with 32 SSRs (Dida et al, 2007)
– Need more markers, mapped
– Used next-generation sequencing (NGS) to
  identify more SSRs in finger millet
   • Ecogenics (Switzerland): Roche 454 seq after SSR
     enrichment (KNE 755, KNE 796 and E. indica)
   • UGA: Illumina MiSeq with Covaris random sheared and
     Pst1 digested libraries of KNE 755 and KNE796
SSR marker development
From Roche 454 data, 178 new SSRs identified
–Validated in laboratory (MSc student, KU)
–63 polymorphic (12 did not work well),        15
monomorphic, 100 did not work/work well
–PIC ranged from 0.12 - 0.77; mean 0.67
Total NGS data assembled and run through MISA to
identify SSRs:
–KNE796 - 1552 SSRs; KNE755 - 1845 SSRs
–SNP markers to be identified from NGS data
Outputs achieved
• Optimized FM sampling, DNA extraction
  and genotyping protocol, prepared
  publication
• Trained students (2 PhD, 2 MSc in
  molecular marker applications; 1 MSc in
  Bioinformatics
• 1408 samples (cultivated and wild)
  genotyped and 6 publications under
  preparation
• > 3000 new SSRs identified; 178 validated
• 63 new SSR markers developed; potentially
  1000s more
Challenges
• Cost of validating SSRs
  – $16 per primer pair, validation
  – 1000s new primer pairs identified
• Mapping of new and potential
  SSR markers
• General lack of genomic
  resources for finger millet
• Scarcity of genomics capacity,
  especially human
Genetic diversity assessment of east African finger millet and cost-effective development of new SSR markers

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Genetic diversity assessment of east African finger millet and cost-effective development of new SSR markers

  • 1. Genetic diversity assessment of east African finger millet and cost-effective development of new SSR markers Santie de Villiers, Kassahun Tesfaye, Emmarold Mneney, Mathews Dida, Patrick Okori, Vincent Njunge, Annis Saiyiorri, Santosh Deshpande, Katrien Devos, Davis Gimode, Dagnachew Lule, Isaac Dramadri, Ismail Mohamed and Damaris Odeny First Bio-Innovate Regional Scientific Conference United Nations Conference Centre (UNCC-ECA) Addis Ababa, Ethiopia, 25-27 February 2013
  • 2. Project Partners ICRISAT: Santie de Villiers, Vincent Njunge, Annis Saiyiorri, Santosh Deshpande, Davis Gimode, Damaris Odeny AAU: Kassahun Tesfaye, Dagnachew Lule MARI: Emmarold Mneney, Ismail Mohamed Makerere: Patrick Okori, Isaac Dramadri Maseno: Mathews Dida UGA: Katrien Devos
  • 3. Combined abstracts ‘Genetic diversity assessment of east African finger millet germplasm using SSR genotyping’ and ‘Employing next generation sequencing technology for cost-effective development of new SSR markers for finger millet’
  • 4. Outline • Microsatellite genotyping for genetic diversity assessment • Generation of new molecular tools for marker assisted breeding • Capacity building • Challenges and opportunities
  • 5. Molecular markers • Characters which inheritance can be followed at morphological, biochemical or DNA level. • We use markers to obtain information about the genetics of traits of interest • Examples – Morphological trait (such as seed or flower color) – Protein (storage or structural proteins and isozymes) – Identifiable piece of DNA sequence • Found at specific locations of the genome and transmitted by the standard laws of inheritance from one generation to the next • Can be used to identify and track particular genes in an experimental cross
  • 6. Finger millet Microsatellite genotyping for to determine genetic relatedness or diversity Optimised sampling strategy • Single sample per accession • Bulked samples of 3 to 5 individuals, leaves or DNA Finger millet is >95% inbred, very little variation expected at DNA level Single or bulked samples can be used
  • 7. Genotyping markers optimization • Tested 83 available UGEP markers; 57 worked well • Identified set of 20 - 30 SSRs • Ranked according to: Polymorphic information content (PIC) No of alleles at each locus and how well represented Ease to work with • 20 markers previously selected by GCP are not the best for African germplasm; only 2 fall within the 20 best markers • Publication
  • 8. Optimised SSR markers for genotyping Marker Name Primer F Primer R Allele No Availability PIC GCP 1 UGEP24 GCCTTTTGATTGTTCAACTCG CGTGATCCCTCTCCTCTCTG 14 0.98 0.88   2 UGEP53 TGCCACAACTGTCAACAAAAG CCTCGATGGCCATTATCAAG 9 0.98 0.87   3 UGEP84 GGAACTTCCGTCAGTCCTTG TGGGGAAGGTGTTGAATCTC 8 0.98 0.82   4 UGEP27 TTGCTCTGAGGTTGTGTTGC TCAAGCATAGTGCCCTCCTC 8 0.98 0.81   5 UGEP98 GTCTTCCATTTGCAGCAACC ACGCGTACTGACGTGCTTG 9 0.93 0.81   6 UGEP95 AGGGGACGCTTGGTTATTTG GCCTCTACCTGTCTCCGTTG 8 0.98 0.79   7 UGEP64 GTCACGTCGATTGGAGTGTG TCTCACGTGCATTTAGTCATTG 11 0.94 0.78   8 UGEP33 TAGCCCGTTTGCTTGTTTTG AAGGCCCTAGAACGTCAAGC 7 0.93 0.76   9 UGEP67 CTCCTGATGCAAGCAAGGAC AGGTGCCGTAGTTTGTGCTC 8 0.96 0.76   10 UGEP106 AATTCCATTCTCTCGCATCG TGCTGTGCTCCTCTGTTGAC 7 0.89 0.75   11 UGEP110 AAATTCGCATCCTTGCTGAC TGACAAGAGCACACCGACTC 6 0.86 0.74   12 UGEP57 CCATGGGTTCATCAAACACC ACATGAGCTCGCGTATTGC 6 0.92 0.73   13 UGEP96 TAATGGGCCTAATGGCAATG CAAAATCCGAGCCAAGATTC 8 0.64 0.72   14 UGEP66 CAGATCTGGGTAGGGCTGTC GATGGTGGTTCATGCCAAC 9 0.93 0.72   15 UGEP46 CAAGTCAAAACATTCAGATGG CCACTCCATTGTAGCGAAAC 6 0.83 0.7   16 UGEP79 CCACTTTGCCGCTTGATTAG TGACATGAGAAGTGCCTTGC 8 0.97 0.7   17 UGEP20 GGGGAAGGCAATGATATGTG TTGGGGAGTGCCAACAATAC 5 1 0.69   18 UGEP12 ATCCCCACCTACGAGATGC TCAAAGTGATGCGTCAGGTC 7 0.97 0.69 GCP 19 UGEP73 GGTCAAAGAGCTGGCTATCG ACCAGAACCGAATCATGAGG 6 0.92 0.67   20 UGEP5 TGTACACAACACCACACTGATG TTGTTTGGACGTTGGATGTG 4 0.91 0.66 GCP 21 UGEP15 AAGGCAATCTCGAATGCAAC AAGCCATGGATCCTTCCTTC 6 0.98 0.6 GCP 22 UGEP56 CTCCGATACAGGCGTAAAGG ACCATAATAGGGCCGCTTG 4 0.98 0.54 GCP 23 UGEP107 TCATGCTCCATGAAGAGTGTG TGTCAAAAACCGGATCCAAG 9 0.57 0.52 GCP 24 UGEP65 AGTGCTAGCTTCCCATCAGC ACCGAAACCCTTGTCAGTTC 5 0.31 0.46 GCP 25 UGEP31 ATGTTGATAGCCGGAAATGG CCGTGAGCCTCGAGTTTTAG 4 0.97 0.45 GCP 26 UGEP3 CCACGAGGCCATACTGAATAG GATGGCCACTAGGGATGTTG 3 0.94 0.4 GCP 27 UGEP68 CGGTCAGCATATAACGAATGG TCATTGATGAATCCGACGTG 3 0.93 0.38 GCP 28 UGEP81 AAGGGCCATACCAACACTCC CACTCGAGAACCGACCTTTG 3 0.97 0.35 GCP 29 UGEP18 TTGCATGTGTTGCTTTTTGC TGTTCTTGATTGCAAACTGATG 3 0.88 0.31 GCP 30 UGEP102 ATGCAGCCTTTGTCATCTCC GATGCCTTCCTTCCCTTCTC 4 0.8 0.19 GCP
  • 9. Finger millet genotyping Assembly and evaluation of FM resources Country received from Cultivated Wild Ethiopia 287 72 Uganda 105 Tanzania 198 5 Kenya 150 Wild (all countries) 29 Total 740 106 HOPE (ICRISAT) 337 Egerton University 225 Total 1302
  • 10. Diversity assessment - genotyping SSR/microsatellite genotyping – Analysed 1307 cultivated accessions (from Bio-Innovate and HOPE projects) – Used 20 SSR markers, generated > 26 000 data points – Wild germplasm (106 accessions) data being finalised Post-graduate students at ICRISAT-Nairobi (3 months) Ethiopia (Dagnachew Lule), Uganda (Isaac Dramadri) and Tanzania (Ismail Mohamed) – DNA extraction – Genotyping – Data analysis – Training course (CAPACITATE) Publication write-up
  • 11. Diversity assessment continued Results All data sets <10% missing data; Analysed with genetic diversity software (PowerMarker, DARwin, Arlequin, STRUCTURE) Combined data: PIC ranged from 0.47 to 0.95 (mean 0.81) Publication strategy Cultivated for each country Wild germplasm across countries 5/6 from BioInnovate, 2 from HOPE
  • 12. Genetic diversity results Ethiopia Kenya Tanzania Uganda
  • 13. Developing additional molecular tools for marker-assisted breeding SSR markers – status and potential – Only 82 published SSR markers available – Basic genetic map with 32 SSRs (Dida et al, 2007) – Need more markers, mapped – Used next-generation sequencing (NGS) to identify more SSRs in finger millet • Ecogenics (Switzerland): Roche 454 seq after SSR enrichment (KNE 755, KNE 796 and E. indica) • UGA: Illumina MiSeq with Covaris random sheared and Pst1 digested libraries of KNE 755 and KNE796
  • 14. SSR marker development From Roche 454 data, 178 new SSRs identified –Validated in laboratory (MSc student, KU) –63 polymorphic (12 did not work well), 15 monomorphic, 100 did not work/work well –PIC ranged from 0.12 - 0.77; mean 0.67 Total NGS data assembled and run through MISA to identify SSRs: –KNE796 - 1552 SSRs; KNE755 - 1845 SSRs –SNP markers to be identified from NGS data
  • 15. Outputs achieved • Optimized FM sampling, DNA extraction and genotyping protocol, prepared publication • Trained students (2 PhD, 2 MSc in molecular marker applications; 1 MSc in Bioinformatics • 1408 samples (cultivated and wild) genotyped and 6 publications under preparation • > 3000 new SSRs identified; 178 validated • 63 new SSR markers developed; potentially 1000s more
  • 16. Challenges • Cost of validating SSRs – $16 per primer pair, validation – 1000s new primer pairs identified • Mapping of new and potential SSR markers • General lack of genomic resources for finger millet • Scarcity of genomics capacity, especially human

Editor's Notes

  1. This project encompass a number of regional institutes with the scientists indicated in bold and students in green. We trained 3 MSc and 1 PhD students
  2. In order to save on time and maximise the number of presentations that can be accommodated, this presentation combines the two abstracts
  3. How similar or different individual finger millet samples are