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Levels of (1→3) β D glucan, Candida mannan and Candida DNA in serum samples of pediatric cancer patients colonized with Candidaspecies

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Figure

Table 1 Surveillance cultures for yeast species inpediatric cancer patients
Table 2 Species spectrum of Candida species isolated from different anatomic sites of pediatric cancer patients
Figure 1 Agarose gel showing amplification of a DNAfragment of ~106 bp by seminested PCR with DNA isolatedfrom serum from patient 1 (lane 2) and patient 2 (lane 3)

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