Protecting tribal peoples nearby patient care centres use a hybrid techniques based on a distribution network
Keywords:
Tracking system, Machine Learning, sentimental analysis, Nearby Patient care system, Distribution NetworkAbstract
Adivasi, or tribal, indigenous cultures are home to over a hundred million Indians. Tribes now account for about 8.5 percent of the Indian population. The majority of tribal communities can be found in central India, from west to east, with a few others in the country's north and east. Tribes have left a rich legacy of folklore, ecology, agriculture, art forms and regional artisan methods. Now we'll start with the tribal’s of Andhra Pradesh. The majority of them are currently dealing with a wide range of medical health issues, including malnutrition, maternal and child health issues, hereditary diseases, mental health issues, communicable diseases, specialist disorders, and non communicable illnesses. Another major issue is that tribal people are uneducated and live in impoverished areas, so they have no idea what to do or what not to do. There is also a lack of health-related awareness, a lack of healthcare facilities in remote rural areas, a lack of emergency transportation, discriminatory behaviour by healthcare providers. All of the issues mentioned above have an impact on tribal people.
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