Imaging-Based Deep Learning for Predicting Desmoid Tumor Progression

Author:

Fares Rabih1,Atlan Lilian D.1,Druckmann Ido1,Factor Shai2ORCID,Gortzak Yair2,Segal Ortal2,Artzi Moran3,Sternheim Amir2ORCID

Affiliation:

1. Department of Radiology, Tel Aviv Sourasky Medical Center, Faculty of Medicine, Tel Aviv University, Tel Aviv 6423906, Israel

2. Division of Orthopedics, Tel Aviv Sourasky Medical Center, Faculty of Medicine, Tel Aviv University, Tel Aviv 6423906, Israel

3. Sagol Brain Institute, Tel Aviv Sourasky Medical Center, Faculty of Medicine, Tel Aviv University, Tel Aviv 6423906, Israel

Abstract

Desmoid tumors (DTs) are non-metastasizing and locally aggressive soft-tissue mesenchymal neoplasms. Those that become enlarged often become locally invasive and cause significant morbidity. DTs have a varied pattern of clinical presentation, with up to 50–60% not growing after diagnosis and 20–30% shrinking or even disappearing after initial progression. Enlarging tumors are considered unstable and progressive. The management of symptomatic and enlarging DTs is challenging, and primarily consists of chemotherapy. Despite wide surgical resection, DTs carry a rate of local recurrence as high as 50%. There is a consensus that contrast-enhanced magnetic resonance imaging (MRI) or, alternatively, computerized tomography (CT) is the preferred modality for monitoring DTs. Each uses Response Evaluation Criteria in Solid Tumors version 1.1 (RECIST 1.1), which measures the largest diameter on axial, sagittal, or coronal series. This approach, however, reportedly lacks accuracy in detecting response to therapy and fails to detect tumor progression, thus calling for more sophisticated methods. The objective of this study was to detect unique features identified by deep learning that correlate with the future clinical course of the disease. Between 2006 and 2019, 51 patients (mean age 41.22 ± 15.5 years) who had a tissue diagnosis of DT were included in this retrospective single-center study. Each had undergone at least three MRI examinations (including a pretreatment baseline study), and each was followed by orthopedic oncology specialists for a median of 38.83 months (IQR 44.38). Tumor segmentations were performed on a T2 fat-suppressed treatment-naive MRI sequence, after which the segmented lesion was extracted to a three-dimensional file together with its DICOM file and run through deep learning software. The results of the algorithm were then compared to clinical data collected from the patients’ medical files. There were 28 males (13 stable) and 23 females (15 stable) whose ages ranged from 19.07 to 83.33 years. The model was able to independently predict clinical progression as measured from the baseline MRI with an overall accuracy of 93% (93 ± 0.04) and ROC of 0.89 ± 0.08. Artificial intelligence may contribute to risk stratification and clinical decision-making in patients with DT by predicting which patients are likely to progress.

Publisher

MDPI AG

Reference39 articles.

1. PDQ Pediatric Treatment Editorial Board PPTE (2024, April 18). Childhood Soft Tissue Sarcoma Treatment (PDQ®), Available online: https://www.cancer.gov/types/soft-tissue-sarcoma/hp/child-soft-tissue-treatment-pdq.

2. En bloc resection for intra-abdominal/retroperitoneal desmoidtype fibromatosis with adjacent organ involvement: A case series and literature review;Wang;Biosci. Trends,2018

3. Association of MRI T2 Signal Intensity with Desmoid Tumor Progression during Active Observation: A Retrospective Cohort Study;Cassidy;Ann. Surg.,2020

4. Current Update on Desmoid Fibromatosis;Ganeshan;J. Comput. Assist. Tomogr.,2019

5. Surgical treatment for local control of extremity and trunk desmoid tumors;Shido;Arch. Orthop. Trauma Surg.,2009

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