Paige.AI. 11 Times Square, New York, NY.
New England Pathology Associates, Springfield, MA.
Am J Surg Pathol. 2024 Jul 1;48(7):846-854. doi: 10.1097/PAS.0000000000002248. Epub 2024 May 27.
The detection of lymph node metastases is essential for breast cancer staging, although it is a tedious and time-consuming task where the sensitivity of pathologists is suboptimal. Artificial intelligence (AI) can help pathologists detect lymph node metastases, which could help alleviate workload issues. We studied how pathologists' performance varied when aided by AI. An AI algorithm was trained using more than 32 000 breast sentinel lymph node whole slide images (WSIs) matched with their corresponding pathology reports from more than 8000 patients. The algorithm highlighted areas suspicious of harboring metastasis. Three pathologists were asked to review a dataset comprising 167 breast sentinel lymph node WSIs, of which 69 harbored cancer metastases of different sizes, enriched for challenging cases. Ninety-eight slides were benign. The pathologists read the dataset twice, both digitally, with and without AI assistance, randomized for slide and reading orders to reduce bias, separated by a 3-week washout period. Their slide-level diagnosis was recorded, and they were timed during their reads. The average reading time per slide was 129 seconds during the unassisted phase versus 58 seconds during the AI-assisted phase, resulting in an overall efficiency gain of 55% ( P <0.001). These efficiency gains are applied to both benign and malignant WSIs. Two of the 3 reading pathologists experienced significant sensitivity improvements, from 74.5% to 93.5% ( P ≤0.006). This study highlights that AI can help pathologists shorten their reading times by more than half and also improve their metastasis detection rate.
检测淋巴结转移对于乳腺癌分期至关重要,尽管这是一项繁琐且耗时的任务,病理学家的敏感性并不理想。人工智能(AI)可以帮助病理学家检测淋巴结转移,这有助于缓解工作量问题。我们研究了 AI 辅助下病理学家的表现如何变化。使用来自 8000 多名患者的超过 32000 个乳腺前哨淋巴结全切片图像(WSI)及其相应的病理报告训练了一个 AI 算法。该算法突出显示了可能存在转移的区域。要求三位病理学家查看一个包含 167 个乳腺前哨淋巴结 WSI 的数据集,其中 69 个具有不同大小的癌症转移灶,富集了具有挑战性的病例。98 张切片为良性。病理学家两次以数字方式阅读数据集,一次有 AI 辅助,一次没有,为了减少偏倚,按幻灯片和阅读顺序随机化,间隔 3 周洗脱期。记录他们的幻灯片级诊断,并在阅读过程中记录他们的用时。在无 AI 辅助阶段,每张幻灯片的平均阅读时间为 129 秒,而在 AI 辅助阶段为 58 秒,总体效率提高了 55%(P<0.001)。这些效率提高适用于良性和恶性 WSI。3 位阅读病理学家中的 2 位的敏感性显著提高,从 74.5%提高到 93.5%(P≤0.006)。这项研究表明,AI 可以帮助病理学家将阅读时间缩短一半以上,并且还可以提高转移检测率。