Sonic Hedgehog (Shh) signalling cascade is one of the intricate signal transduction mechanisms that govern the precisely regulated developmental processes of multicellular organisms. Along with establishing the patterns of cellular differentiation to direct complex organ formation, it also has an important role in post-embryonic tissue regeneration and repair processes. Especially, Shh signalling is implicated in the induction of multifarious neuronal populations in central nervous system. There is compelling evidence of the involvement of Shh protein in the signalling network that regulates various morphogenetic processes such as the exquisite neural tube pattern formation. In the morphogenetic field, the activation of Shh signalling processes is intricately linked to the alterations at the molecular level in the structure of Shh protein that leads to its altered biophysical and biochemical reactivity. This brief article gives an overview of such complex cascade of events in Shh signalling and its transduction pathways.
Objectives:This study aimed to evaluate the cognitive levels of Multiple Choice Questions (MCQs) & Short Answer Questions (SAQs) and types of Item Writing Flaws (IWFs) in MCQs in Medical Pharmacology internal assessment exams.Methods:This descriptive, study was conducted over a period of six months, from December 2015 to May 2016 and evaluated six internal assessment examinations comprising SAQs and MCQs. A total of 150 MCQs and 43 SAQs were analyzed. These questions were administered to third-year medical students in the year of 2015. All SAQs were reviewed for their cognitive levels and MCQs were reviewed for cognitive levels as well as for IWFs. Items were classified as flawed if they contained one or more than one flaw. The cognitive level of the questions was determined by the modified Bloom’s taxonomy.Results:The proportion of flawed items out of 150 items in six exams ranged from 16% to 52%. While the percentage of total flawed items was 28%. Most common types of flaws were implausible distractors 19.69% (26), extra detail in correct option 18.18% (24), vague terms 9.85% (13), unfocused stem 9.09% (12) and absolute terms 9.09% (12). The two-third of MCQs 97(64.67%) were assessing the recall of information, while 29 (19.33%) and 24 (16%) were assessing the interpretation of data and problem-solving skills respectively. The majority of the SAQs (90.7%) were assessing recall of the information and only 9.3% were assessing interpretation of data while none of the questions was assessing the problem-solving skills.Conclusions:The cognitive level of assessment tools (SAQs & MCQs) is low, and IWFS are common in the MCQs. Therefore, faculty should be urged and groomed to design problem-solving questions which are devoid of any flaws.
Male infertility is a major health problem worldwide. We investigated a possible association between leptin, obesity, hormonal interplay and male infertility. This cross‐sectional study of 313 males (178 infertile and 135 fertile) was carried out in 2017. The subjects were categorised by body mass index (BMI) and body fat percentage (BF%) into normal weight, overweight and obese. Significantly higher levels of BMI and BF% (p‐value < 0.001) and lower levels of FSH, LH, testosterone, and SHBG (p‐value < 0.001) were found in infertile males. However, no significant difference was observed in leptin levels (p‐value = 0.35). Leptin levels were significantly higher, and all the sex hormones were significantly lower (p‐value < 0.001) in obese subjects, whereas according to BF% only leptin, FSH and SHBG were significantly different. Leptin showed a significant positive correlation with BMI and BF% (p < 0.001). A strong positive link to serum testosterone was found with age, FSH, and LH (p < 0.001) and a negative one with BMI and BF% (p < 0.001). In mutivariable anlaysis, after adjusting for the other covariates, a significant association between FSH and testosterone (p‐value <0.001) was found. Serum leptin levels did not differ significantly in fertile and infertile groups, and no association was found with infertility. Furthermore, male obesity was found to be associated with infertility with the decrease in levels of sex hormones.
Objectives: The study was planned to determine whether serum calcium, phosphate and alkaline phosphatase (ALP) are predictors of bone mineral density (BMD) in postmenopausal non-osteoporotic, osteopenic, and osteoporotic females. Methods: In this cross sectional study, conducted at Shaikh Zayed Hospital, Lahore in the year 2014-2015, postmenopausal females between 50-70 years of age were taken and divided into three groups non-osteoporotic (n=52), osteopenic (n=69) and osteoporotic (n=47). Serum ALP, phosphate and calcium were used in a stepwise multiple regression analysis to predict T-score in these groups. Results: In normal postmenopausal females, the prediction model was statistically significant, F(2, 41) = 6.041, p < 0.05 and showed a T-score variance of 22%. T-score was primarily predicted by higher levels of phosphate and calcium. In postmenopausal osteopenic females, T-score was only predicted by lower levels of ALP. The model was statistically significant, F(1, 59) = 4.995, p < 0.05, and accounted for approximately 7% of the variance of T-score. In postmenopausal osteoporotic females, the prediction model contained no predictors. Conclusion: Our study suggested that calcium and phosphate are the strongest predictors of T-score in postmenopausal normal females, while in postmenopausal osteopenic females ALP was the strongest predictor of T-score. Elevated serum ALP levels may help in determining loss of BMD in postmenopausal females. doi: https://doi.org/10.12669/pjms.35.3.188 How to cite this:Tariq S, Tariq S, Lone KP, Khaliq S. Alkaline phosphatase is a predictor of Bone Mineral Density in postmenopausal females. Pak J Med Sci. 2019;35(3):---------. doi: https://doi.org/10.12669/pjms.35.3.188 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/3.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
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