﻿<?xml version="1.0" encoding="utf-8"?><doi_batch xmlns="http://www.crossref.org/schema/4.3.7" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.crossref.org/schema/4.3.7 http://www.crossref.org/schema/deposit/crossref4.3.7.xsd"><head><doi_batch_id>jist-2026051920</doi_batch_id><timestamp>20260519202006</timestamp><depositor><depositor_name>CMV Verlag</depositor_name><email_address>khoffmann@cmv-verlag.com</email_address></depositor><registrant>CMV Verlag</registrant></head><body><journal><journal_metadata language="en"><full_title>Journal of Information Systems and Telecommunication (JIST) </full_title><abbrev_title>jist</abbrev_title><issn media_type="electronic">2322-1437</issn></journal_metadata><journal_issue><publication_date media_type="online"><month>5</month><day>5</day><year>2026</year></publication_date><journal_volume><volume>14</volume></journal_volume><issue>1</issue></journal_issue><journal_article publication_type="full_text"><titles><title>Transforming Public Healthcare Supply Chains: A Framework to Measure Efficiency of Heterogeneous Public Healthcare Supply Chains across Nation for Improving Drug Availability</title></titles><contributors><person_name contributor_role="author" sequence="first"><given_name>Abhishek</given_name><surname>Verma</surname></person_name><person_name contributor_role="author" sequence="additional"><given_name>Rekha</given_name><surname>Agarwal</surname></person_name><person_name contributor_role="author" sequence="additional"><given_name>Jitendra</given_name><surname>Singh</surname></person_name></contributors><publication_date media_type="online"><month>5</month><day>5</day><year>2026</year></publication_date><pages><first_page>9</first_page><last_page>24</last_page></pages><doi_data><doi>10.66224/jist.50942.14.1.9</doi><resource>http://jist.ir/en/Article/50942</resource><collection property="crawler-based"><item crawler="iParadigms"><resource>http://jist.ir/en/Article/Download/50942</resource></item><item crawler="google"><resource>http://jist.ir/en/Article/Download/50942</resource></item><item crawler="msn"><resource>http://jist.ir/en/Article/Download/50942</resource></item><item crawler="altavista"><resource>http://jist.ir/en/Article/Download/50942</resource></item><item crawler="yahoo"><resource>http://jist.ir/en/Article/Download/50942</resource></item><item crawler="scirus"><resource>http://jist.ir/en/Article/Download/50942</resource></item></collection><collection property="text-mining"><item><resource mime_type="application/pdf">http://jist.ir/en/Article/Download/50942</resource></item></collection></doi_data><citation_list><citation key="ref1"><unstructured_citation>[1]	L. Dandona et al., “Nations within a nation: variations in epidemiological transition across the states of India, 1990–2016 in the Global Burden of Disease Study,” The Lancet, vol. 390, no. 10111, pp. 2437–2460, Dec. 2017, doi: 10.1016/S0140-6736(17)32804-0.</unstructured_citation></citation><citation key="ref2"><unstructured_citation>
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