Applying machine learning to safe vascular anastomosis.
Abstract
[BACKGROUND] Machine-learning technology is currently being introduced into the medical field and has been shown to aid diagnostic imaging, patient examinations, patient-data analysis, various surgical aspects, and medical education. Recent advances in exoscopes and monitors are prompting a shift from optical microscope-based microsurgery to heads-up microsurgery. The high-definition exoscope images are highly suitable for machine learning. Since an algorithm that detects predictive signs of thrombus formation would aid microsurgery and help train surgeons to identify vessels at risk of unsafe microvascular anastomosis, we here asked whether we could use exoscope images to train such a machine-learning algorithm.
[METHODS] Arterial clots, intimal-wall damage, debris, and stumps in 9150 ORBEYE™ exoscope images of arterial anastomosis obtained in 2023-2024 were annotated with RectLabel pro™. These images were used to train the You Only Look Once (YOLO) model (Ultralytics) to detect the thrombus-predicting signs. The YOLO code was executed within Google Colaboratory™.
[RESULTS] After algorithm training for 100 epochs, the four objects were detected in real time, albeit with high levels of false-positive and false-negative detections.
[CONCLUSION] Our study shows the potential of machine learning on exoscope images to generate algorithms that promote safe microsurgical anastomosis. It also shows how the recent emergence of Python code, Google Colaboratory™, and machine-learning models such as YOLO has made it possible for even programming amateurs to develop effective machine-learning algorithms. Further development of new central and graphics processing units and computational processing methods will likely lead to machine-learning applications that improve surgery and facilitate medical training.
[METHODS] Arterial clots, intimal-wall damage, debris, and stumps in 9150 ORBEYE™ exoscope images of arterial anastomosis obtained in 2023-2024 were annotated with RectLabel pro™. These images were used to train the You Only Look Once (YOLO) model (Ultralytics) to detect the thrombus-predicting signs. The YOLO code was executed within Google Colaboratory™.
[RESULTS] After algorithm training for 100 epochs, the four objects were detected in real time, albeit with high levels of false-positive and false-negative detections.
[CONCLUSION] Our study shows the potential of machine learning on exoscope images to generate algorithms that promote safe microsurgical anastomosis. It also shows how the recent emergence of Python code, Google Colaboratory™, and machine-learning models such as YOLO has made it possible for even programming amateurs to develop effective machine-learning algorithms. Further development of new central and graphics processing units and computational processing methods will likely lead to machine-learning applications that improve surgery and facilitate medical training.
추출된 의학 개체 (NER)
| 유형 | 영어 표현 | 한국어 / 풀이 | UMLS CUI | 출처 | 등장 |
|---|---|---|---|---|---|
| 시술 | microsurgery
|
미세수술 | dict | 3 | |
| 시술 | microvascular
|
미세수술 | dict | 1 | |
| 합병증 | thrombus
|
scispacy | 1 | ||
| 약물 | [BACKGROUND]
|
scispacy | 1 | ||
| 질환 | thrombus
|
C0087086
Thrombus
|
scispacy | 1 | |
| 질환 | intimal-wall damage
|
scispacy | 1 | ||
| 기타 | vascular
|
scispacy | 1 | ||
| 기타 | patient
|
scispacy | 1 | ||
| 기타 | vessels
|
scispacy | 1 | ||
| 기타 | Arterial clots
|
scispacy | 1 | ||
| 기타 | arterial
|
scispacy | 1 | ||
| 기타 | RectLabel
|
scispacy | 1 |
🔗 함께 등장하는 도메인
이 논문이 속한 카테고리와 같은 논문에서 자주 함께 다뤄지는 카테고리들
관련 논문
- Endodontic implications of hypercementosis: A systematic review of anatomical challenges and therapeutic strategies.
- Breast plastic surgery in perimenopausal and postmenopausal women: Menopause-informed counseling on screening, safety, and long-term breast health.
- Application of the SCIA-Pure Skin Perforator Flap in Bilateral Upper Eyelid Reconstruction: A Case Report and Review of the Literature.
- Free flap reconstruction of a cast-related pressure ulcer in a pediatric patient with spinal muscular atrophy.
- Characterization of Trimmed Nerve Morphology Using High-Resolution Imaging: Comparison of Three Surgical Instruments.