Estimating the genetic variability in germplasm collections is important not only for conserving genetic resources, but also for plant breeding purposes. However, generating a large number of different categories data (qualitative and quantitative) often complicate the analysis and results interpretation, resulting in an incomplete distinction of accessions. This study reports the characterization and evaluation of 14 pumpkin (Cucurbita moschata) accessions collected from farms in the northern region of Rio de Janeiro state. Genetic diversity among accessions was also estimated using qualitative and quantitative variables considering joint analysis. The plants were grown under field conditions in a randomized block design with three replications and six plants per plot. Eight qualitative traits (leaf size; seed shape; seed color; color of the fruit pulp; hollow; fruit shape; skin color, and fruit skin texture) and eight quantitative traits (fruit weight; fruit length; fruit diameter; soluble solids, 100 seed weight, and wall thickness measured in the middle and in the lower stem) were evaluated. The data were analyzed considering the Gower distance, and cluster analysis was performed using unweighted pair group method with arithmetic mean (UPGMA). Variability among accessions was observed considering morphoagronomic data. The Gower distance together with UPGMA cluster allowed for good discrimination between accessions in the groups, demonstrating that the simultaneous analysis of qualitative and quantitative data is feasible and may increase the understanding of the variation among accessions. Key words: Cucurbita moschata. Gower distance. Morphoagronomic descriptors. Multivariate analyses. ResumoA estimativa da variabilidade genética em banco de germoplasma é importante não só para conservação dos recursos genéticos, mas também para sua utilização no melhoramento de plantas. Entretanto, a geração de um grande número de variáveis de diferentes categorias (qualitativas e quantitativas) pode dificultar a análise e a interpretação dos resultados, muitas vezes resultando na incompleta distinção dos acessos. Este trabalho objetivou caracterizar 14 acessos de Cucurbita moschata coletados no Norte do Estado do Rio de Janeiro e estimar a divergência genotípica entre esses acessos, utilizando a análise conjunta de variáveis qualitativas e quantitativas. As plantas foram cultivadas a campo, no delineamento de blocos ao acaso, com três repetições e seis plantas por parcela. oito variáveis qualitativas (tamanho da folha; formato da semente; cor da semente; cor da polpa do fruto; reentrância; formato do fruto; cor predominante da casca e textura da superfície da casca) e oito variáveis quantitativas (massa do fruto; comprimento e diâmetro do fruto; teor de sólidos solúveis totais; massa de 100 sementes, e espessura da polpa no pedúnculo, mediana e inferior). Os dados foram analisados considerando a distância de Gower e o agrupamento dos acessos foi realizado pelo método UPGMA. Verificou-se variabilidade entre os aces...
ABSTRACT. We investigated inheritance of resistance to Pepper yellow mosaic virus (PepYMV) in Capsicum baccatum var. pendulum accessions UENF 1616 (susceptible) crossed with UENF 1732 (resistant). Plants from generations P 1 , P 2 , F 1 , F 2 , BC 1:1 , and BC 1:2 were inoculated and the symptoms were evaluated for 25 days. Subsequently, an area under the disease progress curve was calculated and subjected to generation means analysis. Only the average and epistatic effects were significant. The broad and narrow sense heritability estimates were 35.52 and 21.79%, respectively. The estimate of the minimum number of genes that control resistance was 7, indicating that resistance is polygenic and complex. Thus, methods to produce segregant populations that advocate selection in more advanced generations would be the most appropriate to produce chili pepper cultivars resistant to PepYMV.
The traditional farmers play an important role in plant genetic resources conservation. Collecting the germplasm maintained by these farmers is a very important action to avoid genetic variability losses. The goals of this work were to collect sweet potato from farms in the north of Rio de Janeiro state; to gather information regarding to the farmers profile, and to characterize the sweet potato landraces collected using morphological descriptors. Fifty three farms were visited in six collection expedition and 46 accessions were collected. During the visits the farmers were interviewed using a query with ten items. Six root traits and eight descriptors for vegetative parts were used for morphological characterization. The data were analyzed based on Cole-Rodgers distance and clustering was done with UPGMA method. Familiar agriculture with subsistence objective was observed and sweet potato was cultivated by 72% of the farmers at least for more than a decade, supporting the observation that this vegetable is traditionally cultivated in small areas in the specific region. The morphological characterization was efficient to detect genetic variability among accessions, revealing that traditional farmers from Campos dos Goytacazes and São João da Barra are responsible for sweet potato genotypes conservation with expressive genetic diversity in their properties. There was no relationship between genetic distance and collecting areas.
Hetero sis has been exploited in Capsicum annuum
-Diversity and genetic relationship in forty landraces of
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