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Evidence of sexual dimorphism in Fingerprint patterns of Children with Learning Disability

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Figshare2021-06-04 更新2026-04-08 收录
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https://figshare.com/articles/dataset/Evidence_of_sexual_dimorphism_in_Fingerprint_patterns_of_Children_with_Learning_Disability/14727900/1
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<b>Background</b>: Fingerprints are unique, permanent impressions on the finger, which is genetically determined at birth. Fingerprint pattern is an infallible means of personal bio identification and could be a predictive marker for several congenital disorders. The relationship between learning disability (LD) and fingerprint pattern is yet to be established. <b>Objectives</b>: This study compared the fingerprint patterns between students with LD and Non-LD students with a sexual dimorphic lens. <b>Materials and Methods</b>: 300 students (150 LD students and 150 non-LD students), aged between 3-25 years were recruited for this descriptive cross-sectional study. Each study group consisted of 75 males and 75 females. The different fingerprint patterns (arch, whorl, ulnar loop, and radial loop), as well as the following ridge counts: total finger ridge count (TFRC), absolute ridge count (ARC), ulnar ridge count (URC), and radial ridge count (RRC) were accessed using a digital scanner and a fingerprint reader. <b>Results</b>: Students with LD showed a higher frequency of whorl (32.87%), while non-LD students showed a higher occurrence of the ulnar loop (32.53%). TFRC, ARC, and URC were significantly higher in females with LD than non-LD females (<i>p</i>=0.01, 0.03, and 0.00, respectively). In contrast, males with LD showed significantly lower TFRC, RRC, and URC count than the non-LD males (<i>p=</i>0.02, 0.01, and 0.00, respectively). <b>Conclusion</b>: Fingerprints pattern and fingerprint ridge counts showed sexual dimorphism in LD and non-LD students. The finger ridge count is amplified in subjects with LD and could be a good predictive tool for LD.
提供机构:
Okafor, Izuchukwu; Ezejindu, Damian; Obi, Ndubuisi; Okeke, Chijioke
创建时间:
2021-06-04
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