Intraoperative margin assessment for basal cell carcinoma with deep learning and histologic tumor mapping to surgical site.
Joshua J LevyMatthew J DavisRachael S ChackoMichael J DavisLucy J FuTarushii GoelAkash PamalIrfan NafiAbhinav AngirekulaAnish SuvarnaRam VempatiBrock C ChristensenMatthew S HaydenLouis J VaickusMatthew R LeBoeufPublished in: NPJ precision oncology (2024)
Successful treatment of solid cancers relies on complete surgical excision of the tumor either for definitive treatment or before adjuvant therapy. Intraoperative and postoperative radial sectioning, the most common form of margin assessment, can lead to incomplete excision and increase the risk of recurrence and repeat procedures. Mohs Micrographic Surgery is associated with complete removal of basal cell and squamous cell carcinoma through real-time margin assessment of 100% of the peripheral and deep margins. Real-time assessment in many tumor types is constrained by tissue size, complexity, and specimen processing / assessment time during general anesthesia. We developed an artificial intelligence platform to reduce the tissue preprocessing and histological assessment time through automated grossing recommendations, mapping and orientation of tumor to the surgical specimen. Using basal cell carcinoma as a model system, results demonstrate that this approach can address surgical laboratory efficiency bottlenecks for rapid and complete intraoperative margin assessment.
Keyphrases
- deep learning
- basal cell carcinoma
- artificial intelligence
- squamous cell carcinoma
- high resolution
- stem cells
- big data
- bone marrow
- acute coronary syndrome
- radiation therapy
- mass spectrometry
- lymph node metastasis
- atrial fibrillation
- high density
- quantum dots
- convolutional neural network
- childhood cancer
- loop mediated isothermal amplification