TY - JOUR
T1 - Artificial Intelligence Helps Pathologists Increase Diagnostic Accuracy and Efficiency in the Detection of Breast Cancer Lymph Node Metastases
AU - Retamero, Juan Antonio
AU - Gulturk, Emre
AU - Bozkurt, Alican
AU - Liu, Sandy
AU - Gorgan, Maria
AU - Moral, Luis
AU - Horton, Margaret
AU - Parke, Andrea
AU - Malfroid, Kasper
AU - Sue, Jill
AU - Rothrock, Brandon
AU - Oakley, Gerard
AU - Demuth, George
AU - Millar, Ewan
AU - Fuchs, Thomas J.
AU - Klimstra, David S.
N1 - Publisher Copyright:
© 2024 The Author(s). Published by Wolters Kluwer Health, Inc.
PY - 2024/7/1
Y1 - 2024/7/1
N2 - 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.
AB - 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.
KW - Artificial intelligence
KW - breast cancer
KW - digital pathology
KW - lymph node metastases
UR - http://www.scopus.com/inward/record.url?scp=85196486287&partnerID=8YFLogxK
U2 - 10.1097/PAS.0000000000002248
DO - 10.1097/PAS.0000000000002248
M3 - Article
C2 - 38809272
AN - SCOPUS:85196486287
SN - 0147-5185
VL - 48
SP - 846
EP - 854
JO - American Journal of Surgical Pathology
JF - American Journal of Surgical Pathology
IS - 7
ER -