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144P Comparison of multiple large language models (LLMs) for assessment and management of sarcoma cases
0
Zitationen
8
Autoren
2026
Jahr
Abstract
Table: 143P Baseline demographic and clinical characteristics of overall population Variable Overall population n (%) Sex M F 35 (20) 141 (80) Ethnicity White Other 123 (70) 53 (30) ECOG 0 1 101 (57) 75 (43) Diabetes 16 (9) Hypertension 40 (23) BMI 26 [23-30] Age-adv diagnosis 56.9 10.4 yrs Year diagnosis 2018 [2014-2023] Stage at diagnosis Localized Advanced 116 (66) 60 (34) Grade 1 2 3 NA 4 (3) 33 (19) 79 (44) 60 (34) Time from diagnosis to mLMS 5.46 mo [0.22-18.28]Metastases Lung Liver Soft tissue Lymph node Other 113 (64) 58 (33) 63 (36) 5 (3) 30 (17) Primary site Uterus Other 95 (54) 81 (46) Surgery in localized 121 (69) Surgery in advanced 32 (18) RT pre-FLT 26 (15) Surgery pre-FLT 25 (14) Other procedures pre-FLT 9 (5)
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