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The accelerated failure time model has an intuitive physical interpretation and would be a useful alternative to the Cox model in survival analysis.</jats:p>","journal":"Statistics in Medicine","year":1992,"id":18646,"datarank":18.80188994157934,"base_score":6.725033642166843,"endowment":6.725033642166843,"self_citation_contribution":1.0087550463250265,"citation_network_contribution":17.793134895254312,"self_endowment_contribution":1.0087550463250265,"citer_contribution":17.793134895254312,"corpus_percentile":null,"corpus_rank":null,"citation_count":832,"citer_count":200,"citers_with_citation_signal":200,"citers_with_endowment":200,"datacite_reuse_total":25,"is_dataset":false,"is_dataset_confidence":null,"is_oa":false,"file_count":0,"downloads":0,"has_version_chain":false,"published_date":null,"algorithm_id":"datarank_citation_only_1hop_v6","ranking_scope":"data_only","authors":[{"id":128852,"name":"L. J. 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