Suaka Kue, Laura Budvytyte, Mariah L Schroeder, Alyssa K McGary, Rish K Pai, Marcela A Salomao, Karlie Smith, Margaret S Ryan, Chirag Patel, Maxwell L Smith, Rolland Dickson
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Results were correlated with traditional and Banff histologic assessment and clinical parameters.<i>Results.</i>By traditional assessment, steatosis ranged from 0%-40%. The AI model identified a range of 0 to 15.9% steatosis. There was no difference in patient survival by any measures of steatosis. AI steatosis correlated with increased risk of early allograft dysfunction (OR = 1.63, <i>P</i> < .001), respiratory failure (OR = 1.21, <i>P</i> = .003), and more advanced fibrosis (OR = 1.18, <i>P</i> = .030), but was not correlated with graft or patient survival. FIA/lipopeliosis were identified in a range of 0 to 6.42%. In univariate analysis the percentage of FIA/lipopeliosis correlated with both graft and patient survival (<i>P</i> = .044 and <i>P</i> = .009, respectively), but was not associated with increased risk of early allograft dysfunction, respiratory failure, or advanced fibrosis.<i>Conclusions.</i>We developed an AI model that quantitates large droplet fat and FIA/lipopeliosis on frozen section slides and found a correlation with post-transplant outcomes. Further studies on larger, multi-institutional cohorts with higher fat containing donors are necessary to determine the role this model may have in organ acceptance decisions.</p>","PeriodicalId":14416,"journal":{"name":"International Journal of Surgical Pathology","volume":" ","pages":"10668969251344970"},"PeriodicalIF":0.9000,"publicationDate":"2025-06-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Artificial Intelligence Quantitation of Steatosis on Frozen Section Preimplant Slides Correlates with Some Liver Transplant Outcomes.\",\"authors\":\"Suaka Kue, Laura Budvytyte, Mariah L Schroeder, Alyssa K McGary, Rish K Pai, Marcela A Salomao, Karlie Smith, Margaret S Ryan, Chirag Patel, Maxwell L Smith, Rolland Dickson\",\"doi\":\"10.1177/10668969251344970\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p><i>Introduction.</i>Increased steatosis on preimplant liver frozen section is associated with delayed graft function and primary nonfunction. Efforts to standardize histologic assessment have proven difficult. Frozen section artifact and lipopeliosis complicate the detection of steatosis. We aimed to develop and validate an AI model to recognize large droplet fat and fat induced artifact (FIA)/lipopeliosis on preimplantation frozen section and to correlate the AI results with post-transplant clinical parameters.<i>Methods.</i>The model was applied to 161 consecutive liver transplant specimens with preimplant slides. Results were correlated with traditional and Banff histologic assessment and clinical parameters.<i>Results.</i>By traditional assessment, steatosis ranged from 0%-40%. The AI model identified a range of 0 to 15.9% steatosis. There was no difference in patient survival by any measures of steatosis. AI steatosis correlated with increased risk of early allograft dysfunction (OR = 1.63, <i>P</i> < .001), respiratory failure (OR = 1.21, <i>P</i> = .003), and more advanced fibrosis (OR = 1.18, <i>P</i> = .030), but was not correlated with graft or patient survival. FIA/lipopeliosis were identified in a range of 0 to 6.42%. In univariate analysis the percentage of FIA/lipopeliosis correlated with both graft and patient survival (<i>P</i> = .044 and <i>P</i> = .009, respectively), but was not associated with increased risk of early allograft dysfunction, respiratory failure, or advanced fibrosis.<i>Conclusions.</i>We developed an AI model that quantitates large droplet fat and FIA/lipopeliosis on frozen section slides and found a correlation with post-transplant outcomes. 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引用次数: 0
摘要
介绍。肝移植前冷冻切片脂肪变性增加与移植物功能延迟和原发性无功能相关。标准化组织学评估的努力已被证明是困难的。冷冻切片伪影和脂质增多使脂肪变性的检测复杂化。本研究旨在建立并验证人工智能模型,以识别大滴脂肪和脂肪诱导伪影(FIA)/脂肪增生,并将人工智能结果与移植后的临床参数相关联。结果:经传统评估,脂肪变性范围为0% ~ 40%。人工智能模型确定了0%至15.9%的脂肪变性。通过任何脂肪变性的测量,患者的生存率都没有差异。AI脂肪变性与早期同种异体移植物功能障碍风险增加(OR = 1.63, P = 0.003)和晚期纤维化风险增加(OR = 1.18, P = 0.030)相关,但与移植物或患者生存无关。FIA/脂质沉积的范围为0 ~ 6.42%。在单变量分析中,FIA/脂质沉积的百分比与移植物和患者生存率相关(P =。044和P =。结论:我们开发了一种人工智能模型,可以定量分析冷冻切片切片上的大液滴脂肪和FIA/脂质沉积,并发现它们与移植后的预后相关。为了确定该模型在器官接受决策中可能发挥的作用,有必要对更大的、多机构的高脂肪供体队列进行进一步研究。
Artificial Intelligence Quantitation of Steatosis on Frozen Section Preimplant Slides Correlates with Some Liver Transplant Outcomes.
Introduction.Increased steatosis on preimplant liver frozen section is associated with delayed graft function and primary nonfunction. Efforts to standardize histologic assessment have proven difficult. Frozen section artifact and lipopeliosis complicate the detection of steatosis. We aimed to develop and validate an AI model to recognize large droplet fat and fat induced artifact (FIA)/lipopeliosis on preimplantation frozen section and to correlate the AI results with post-transplant clinical parameters.Methods.The model was applied to 161 consecutive liver transplant specimens with preimplant slides. Results were correlated with traditional and Banff histologic assessment and clinical parameters.Results.By traditional assessment, steatosis ranged from 0%-40%. The AI model identified a range of 0 to 15.9% steatosis. There was no difference in patient survival by any measures of steatosis. AI steatosis correlated with increased risk of early allograft dysfunction (OR = 1.63, P < .001), respiratory failure (OR = 1.21, P = .003), and more advanced fibrosis (OR = 1.18, P = .030), but was not correlated with graft or patient survival. FIA/lipopeliosis were identified in a range of 0 to 6.42%. In univariate analysis the percentage of FIA/lipopeliosis correlated with both graft and patient survival (P = .044 and P = .009, respectively), but was not associated with increased risk of early allograft dysfunction, respiratory failure, or advanced fibrosis.Conclusions.We developed an AI model that quantitates large droplet fat and FIA/lipopeliosis on frozen section slides and found a correlation with post-transplant outcomes. Further studies on larger, multi-institutional cohorts with higher fat containing donors are necessary to determine the role this model may have in organ acceptance decisions.
期刊介绍:
International Journal of Surgical Pathology (IJSP) is a peer-reviewed journal published eight times a year, which offers original research and observations covering all major organ systems, timely reviews of new techniques and procedures, discussions of controversies in surgical pathology, case reports, and images in pathology. This journal is a member of the Committee on Publication Ethics (COPE).