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Patient-level thyroid cancer classification using attention multiple instance learning on fused multi-scale ultrasound image features.

1/5 보강
AMIA ... Annual Symposium proceedings. AMIA Symposium 2023 Vol.2023() p. 1344-1353
출처

PICO 자동 추출 (휴리스틱, conf 2/4)

유사 논문
P · Population 대상 환자/모집단
We developed a multi-scale, attention-based multiple-instance learning model which fuses both global and local features of different ultrasound frames to achieve patient-level malignancy classification.
I · Intervention 중재 / 시술
추출되지 않음
C · Comparison 대조 / 비교
추출되지 않음
O · Outcome 결과 / 결론
Our model demonstrates improved performance with an AUROC of 0.785 (p<0.05) and AUPRC of 0.539, significantly surpassing the baseline model trained on clinical features with an AUROC of 0.667 and AUPRC of 0.444. Improved classification performance better triages the need for biopsy.

Zhuang L, Ivezic V, Feng J, Shen C, Radhachandran A, Sant V

📝 환자 설명용 한 줄

For patients with thyroid nodules, the ability to detect and diagnose a malignant nodule is the key to creating an appropriate treatment plan.

🔬 핵심 임상 통계 (초록에서 자동 추출 — 원문 검증 권장)
  • p-value p<0.05

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↓ .bib ↓ .ris
APA Zhuang L, Ivezic V, et al. (2023). Patient-level thyroid cancer classification using attention multiple instance learning on fused multi-scale ultrasound image features.. AMIA ... Annual Symposium proceedings. AMIA Symposium, 2023, 1344-1353.
MLA Zhuang L, et al.. "Patient-level thyroid cancer classification using attention multiple instance learning on fused multi-scale ultrasound image features.." AMIA ... Annual Symposium proceedings. AMIA Symposium, vol. 2023, 2023, pp. 1344-1353.
PMID 38222341 ↗

Abstract

For patients with thyroid nodules, the ability to detect and diagnose a malignant nodule is the key to creating an appropriate treatment plan. However, assessments of ultrasound images do not accurately represent malignancy, and often require a biopsy to confirm the diagnosis. Deep learning techniques can classify thyroid nodules from ultrasound images, but current methods depend on manually annotated nodule segmentations. Furthermore, the heterogeneity in the level of magnification across ultrasound images presents a significant obstacle to existing methods. We developed a multi-scale, attention-based multiple-instance learning model which fuses both global and local features of different ultrasound frames to achieve patient-level malignancy classification. Our model demonstrates improved performance with an AUROC of 0.785 (p<0.05) and AUPRC of 0.539, significantly surpassing the baseline model trained on clinical features with an AUROC of 0.667 and AUPRC of 0.444. Improved classification performance better triages the need for biopsy.

🏷️ 키워드 / MeSH 📖 같은 키워드 OA만

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🏷️ 같은 키워드 · 무료전문 — 이 논문 MeSH/keyword 기반

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