利用变压器模型从H&E全幻灯片图像预测贝伐单抗治疗卵巢癌的效果

Md Shakhawat Hossain , Munim Ahmed , Md Sahilur Rahman , MM Mahbubul Syeed , Mohammad Faisal Uddin
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引用次数: 0

摘要

卵巢癌(OC)在所有与癌症相关的女性死亡中排名第五。上皮性卵巢癌(EOC)是卵巢癌的一个亚类,占所有患者的95%。EOC的常规治疗是减体积手术加辅助化疗;然而,在70%的病例中,这导致了逐渐的耐药性和肿瘤复发。美国食品和药物管理局(FDA)最近批准了贝伐单抗治疗EOC患者。在30%的病例中,贝伐单抗提高了生存率并降低了复发率,而其余的病例报告了副作用,包括严重高血压(27%)、血小板减少(26%)、出血问题(39%)、心脏问题(11%)、肾脏问题(7%)、肠穿孔和伤口愈合延迟。此外,它是昂贵的;单周期贝伐单抗治疗费用约为3266美元。因此,选择患者进行这种治疗是至关重要的,因为成本高,可能的不良反应和小的受益者。之前提出了几种方法;然而,他们未能达到足够的准确性。我们提出了一种人工智能驱动的方法来预测从患者活检产生的H&;E全幻灯片图像(WSI)的效果。我们使用10 ×和20 ×图像训练多个CNN和transformer模型来预测效果。最后,考虑到数据高效图像转换器(Data Efficient Image Transformer, DeiT)模型具有较高的精度、互操作性和时间效率,选择了DeiT模型。该方法的试验准确度为96.60%,5次交叉验证准确度为93%,可在30 s内预测效果。该方法比目前最先进的测试准确度(85.10%)提高了11%,交叉验证准确度(88.2%)提高了5%。较高的预测精度和较短的预测时间保证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the effect of Bevacizumab therapy in ovarian cancer from H&E whole slide images using transformer model
Ovarian cancer (OC) ranks fifth in all cancer-related fatalities in women. Epithelial ovarian cancer (EOC) is a subclass of OC, accounting for 95 % of all patients. Conventional treatment for EOC is debulking surgery with adjuvant Chemotherapy; however, in 70 % of cases, this leads to progressive resistance and tumor recurrence. The United States Food and Drug Administration (FDA) recently approved Bevacizumab therapy for EOC patients. Bevacizumab improved survival and decreased recurrence in 30 % of cases, while the rest reported side effects, which include severe hypertension (27 %), thrombocytopenia (26 %), bleeding issues (39 %), heart problems (11 %), kidney problems (7 %), intestinal perforation and delayed wound healing. Moreover, it is costly; single-cycle Bevacizumab therapy costs approximately $3266. Therefore, selecting patients for this therapy is critical due to the high cost, probable adverse effects and small beneficiaries. Several methods were proposed previously; however, they failed to attain adequate accuracy. We present an AI-driven method to predict the effect from H&E whole slide image (WSI) produced from a patient's biopsy. We trained multiple CNN and transformer models using 10 × and 20 × images to predict the effect. Finally, the Data Efficient Image Transformer (DeiT) model was selected considering its high accuracy, interoperability and time efficiency. The proposed method achieved 96.60 % test accuracy and 93 % accuracy in 5-fold cross-validation and can predict the effect in less than 30 s. This method outperformed the state-of-the-art test accuracy (85.10 %) by 11 % and cross-validation accuracy (88.2 %) by 5 %. High accuracy and low prediction time ensured the efficacy of the proposed method.
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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
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187 days
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