Showing 481 - 500 results of 537 for search '"Chhattisgarh"', query time: 0.10s Refine Results
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    Prevalence and associated factors for awareness of hypertension in India: Findings from national survey-4 by Ashoo Grover, U Venkatesh, Glory Ghai, Vignitha Babu, Sumit Aggarwal, Ravinder Singh, Palanivel Chinnakali, Jugal Kishore, Mahendra Pratap Singh, Sonu Goel, R Durga, R D Yashwanth, Surekha Kishore

    Published 2022-01-01
    “…The awareness varied among states ranging from 29.6% in Chhattisgarh to 75.6% in Tamil Nadu. The multivariable logistic regression model explained the awareness of hypertension in males increased with age (odds ratios [OR]: 0.226 for 95% confidence interval [CI]: 0.139–0.366 for 25–29 years of age increased to 0.599 for 95% CI: 0.48–0.74 for 40–44 years of age), education (OR of 0.66 for 95% CI: 0.51–0.85 for primary increased to 0.69 for 95% CI: 0.54–0.89 for secondary school level), and wealth status (OR of 0.407 for 95% CI: 0.309–0.535 for poor wealth quintile increased to 1.030 for 95% CI: 0.863–1.230 for the richest wealth quintile). …”
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  3. 483

    Risk factors for maternal mortality among 1.9 million women in nine Empowered Action Group states in India: secondary analysis of Annual Health Survey data by Horwood, G, Opondo, C, Choudhury, SS, Rani, A, Nair, M

    Published 2020
    “…<br></br> Setting Nine states: Assam, Bihar, Chhattisgarh, Jharkhand, Madhya Pradesh, Odisha, Rajasthan, Uttar Pradesh and Uttarakhand. …”
    Journal article
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    Deepened socioeconomic inequality in clean cooking fuel use in India from 2005-2006 to 2015–2016 by Samarul Islam, Md. Juel Rana, Matthew Shupler

    Published 2023-06-01
    “…Further, in wealthier states (Delhi, Goa, Punjab, Haryana, Tamil Nadu, Kerala, and undivided Andhra Pradesh), CCF use increased by more than 20% among the poorest individuals compared with less than 1% among the poorest families in lower income states (Tripura, Meghalaya, Madhya Pradesh, Jharkhand, Chhattisgarh, Bihar). To promote a more equitable clean energy transition, poorer and rural Indian households should be prioritized for CCF promotion programs.…”
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  5. 485

    Role of Mitanin community health workers in improving complementary feeding practices under scaled-up home-based care of young children in a rural region of India by Samir Garg, Mukesh Dewangan, Kavita Patel, C. Krishnendhu, Prabodh Nanda

    Published 2023-04-01
    “…The current study was aimed at assessing the coverage of HBYC in Chhattisgarh state where it has been implemented through 67,000 rural CHWs known as Mitanins. …”
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    Delineation of suitable sites for groundwater recharge based on groundwater potential with RS, GIS, and AHP approach for Mand catchment of Mahanadi Basin by Shreeya Baghel, M. P. Tripathi, Dhiraj Khalkho, Nadhir Al-Ansari, Aekesh Kumar, Ahmed Elbeltagi

    Published 2023-06-01
    “…The study region is the Mand catchment of the Mahanadi basin, covering 5332.07 km2 and is located between 21°42′15.525″N and 23°4′19.746″N latitude and 82°50′54.503″E and 83°36′1.295″E longitude in Chhattisgarh, India. The research comprises the generation of thematic maps, delineation of groundwater potential zones and the recommendation of structures for efficiently and successfully recharging groundwater utilising RS and GIS. …”
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    Input Use Efficiency Management for Paddy Production Systems in India: A Machine Learning Approach by Priya Brata Bhoi, Veeresh S. Wali, Deepak Kumar Swain, Kalpana Sharma, Akash Kumar Bhoi, Manlio Bacco, Paolo Barsocchi

    Published 2021-08-01
    “…Inputs like human labor, mechanical labor, fertilizer, irrigation and insecticide were found to determine the yield in paddy cultivation across India (except for Chhattisgarh). Inefficiency in the paddy production in Punjab, Bihar, West Bengal, Andhra Pradesh, Tamil Nadu, Kerala, Assam, Gujarat and Odisha in 2016–2017 was caused by technical inefficiency due to poor input management, as suggested by the significant σ<sup>2</sup>U and σ<sup>2</sup>v values of the stochastic frontier model. …”
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