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The accuracy level of interpretation from the total of 332 buildings sample is 95.18% (Table 14).
Construction materials covered with black materials were also taken from the buildings (sample nos. 3401 3414 in Table 1).
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However, our findings suggest that existing guidelines were not fully implemented in the buildings sampled.
None of the nine "complaint" buildings sampled was in a minority or low-income area.
These buildings are also among the smallest buildings sampled, only one having more than four floors (Table 2).
Table 2 conveys the following information pertinent to interpreting indoor air perc levels in the dry cleaner buildings sampled.
Of the 24 buildings sampled, 13 contained caulking material in which detectable levels of PCBs were measured.
Buildings sampled include residential buildings where at least one household met NYC Perc Project eligibility criteria and enrolled in the study.
Although there were comparatively fewer dry cleaner buildings present in minority, low-income ZIP code areas, they accounted for a third of all dry cleaner buildings sampled.
First, the buildings sampled are dispersed throughout minority, low-income and nonminority, higher income neighborhoods and thus provide information for buildings in socioeconomically diverse areas.
Thus, within ZIP code areas, population characteristics of the dry cleaner buildings sampled are similar to those that were not sampled.
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com