Expanding the Medical Decathlon dataset: segmentation of colon and colorectal cancer from computed tomography images
- URL: http://arxiv.org/abs/2407.21516v1
- Date: Wed, 31 Jul 2024 10:36:41 GMT
- Title: Expanding the Medical Decathlon dataset: segmentation of colon and colorectal cancer from computed tomography images
- Authors: I. M. Chernenkiy, Y. A. Drach, S. R. Mustakimova, V. V. Kazantseva, N. A. Ushakov, S. K. Efetov, M. V. Feldsherov,
- Abstract summary: Colorectal cancer is the third-most common cancer in the Western Hemisphere.
The segmentation of colorectal and colorectal cancer by computed tomography is an urgent problem in medicine.
This paper presents an extension of the Medical Decathlon dataset with colorectal markups in order to improve the quality of segmentation algorithms.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Colorectal cancer is the third-most common cancer in the Western Hemisphere. The segmentation of colorectal and colorectal cancer by computed tomography is an urgent problem in medicine. Indeed, a system capable of solving this problem will enable the detection of colorectal cancer at early stages of the disease, facilitate the search for pathology by the radiologist, and significantly accelerate the process of diagnosing the disease. However, scientific publications on medical image processing mostly use closed, non-public data. This paper presents an extension of the Medical Decathlon dataset with colorectal markups in order to improve the quality of segmentation algorithms. An experienced radiologist validated the data, categorized it into subsets by quality, and published it in the public domain. Based on the obtained results, we trained neural network models of the UNet architecture with 5-part cross-validation and achieved a Dice metric quality of $0.6988 \pm 0.3$. The published markups will improve the quality of colorectal cancer detection and simplify the radiologist's job for study description.
Related papers
- Towards a Benchmark for Colorectal Cancer Segmentation in Endorectal Ultrasound Videos: Dataset and Model Development [59.74920439478643]
In this paper, we collect and annotated the first benchmark dataset that covers diverse ERUS scenarios.
Our ERUS-10K dataset comprises 77 videos and 10,000 high-resolution annotated frames.
We introduce a benchmark model for colorectal cancer segmentation, named the Adaptive Sparse-context TRansformer (ASTR)
arXiv Detail & Related papers (2024-08-19T15:04:42Z) - BreastRegNet: A Deep Learning Framework for Registration of Breast
Faxitron and Histopathology Images [0.05454343470301196]
This study introduces a deep learning-based image registration approach trained on mono-modal synthetic image pairs.
The models were trained using data from 50 women who received neoadjuvant chemotherapy and underwent surgery.
arXiv Detail & Related papers (2024-01-18T08:23:29Z) - Image Synthesis-based Late Stage Cancer Augmentation and Semi-Supervised
Segmentation for MRI Rectal Cancer Staging [9.992841347751332]
The aim of this study is to segment the mesorectum, rectum, and rectal cancer region so that the system can predict T-stage from segmentation results.
In the ablation studies, our semi-supervised learning approach with the T-staging loss improved specificity by 0.13.
arXiv Detail & Related papers (2023-12-08T01:36:24Z) - Cancer-Net PCa-Data: An Open-Source Benchmark Dataset for Prostate
Cancer Clinical Decision Support using Synthetic Correlated Diffusion Imaging
Data [75.77035221531261]
Cancer-Net PCa-Data is an open-source benchmark dataset of volumetric CDI$s$ imaging data of PCa patients.
Cancer-Net PCa-Data is the first-ever public dataset of CDI$s$ imaging data for PCa.
arXiv Detail & Related papers (2023-11-20T10:28:52Z) - CARE: A Large Scale CT Image Dataset and Clinical Applicable Benchmark
Model for Rectal Cancer Segmentation [8.728236864462302]
Rectal cancer segmentation of CT image plays a crucial role in timely clinical diagnosis, radiotherapy treatment, and follow-up.
These obstacles arise from the intricate anatomical structures of the rectum and the difficulties in performing differential diagnosis of rectal cancer.
To address these issues, this work introduces a novel large scale rectal cancer CT image dataset CARE with pixel-level annotations for both normal and cancerous rectum.
We also propose a novel medical cancer lesion segmentation benchmark model named U-SAM.
The model is specifically designed to tackle the challenges posed by the intricate anatomical structures of abdominal organs by incorporating prompt information.
arXiv Detail & Related papers (2023-08-16T10:51:27Z) - Centroid-aware feature recalibration for cancer grading in pathology
images [1.3416507206206674]
We propose a centroid-aware feature recalibration network that can conduct cancer grading in an accurate and robust manner.
The proposed network maps an input pathology image into an embedding space and adjusts it by using centroids embedding vectors of different cancer grades.
We evaluate the proposed network using colorectal cancer datasets that were collected under different environments.
arXiv Detail & Related papers (2023-07-26T04:01:57Z) - A Multi-Institutional Open-Source Benchmark Dataset for Breast Cancer
Clinical Decision Support using Synthetic Correlated Diffusion Imaging Data [82.74877848011798]
Cancer-Net BCa is a multi-institutional open-source benchmark dataset of volumetric CDI$s$ imaging data of breast cancer patients.
Cancer-Net BCa is publicly available as a part of a global open-source initiative dedicated to accelerating advancement in machine learning to aid clinicians in the fight against cancer.
arXiv Detail & Related papers (2023-04-12T05:41:44Z) - Generative Residual Attention Network for Disease Detection [51.60842580044539]
We present a novel approach for disease generation in X-rays using a conditional generative adversarial learning.
We generate a corresponding radiology image in a target domain while preserving the identity of the patient.
We then use the generated X-ray image in the target domain to augment our training to improve the detection performance.
arXiv Detail & Related papers (2021-10-25T14:15:57Z) - Topological Data Analysis of copy number alterations in cancer [70.85487611525896]
We explore the potential to capture information contained in cancer genomic information using a novel topology-based approach.
We find that this technique has the potential to extract meaningful low-dimensional representations in cancer somatic genetic data.
arXiv Detail & Related papers (2020-11-22T17:31:23Z) - Hierarchical Classification of Pulmonary Lesions: A Large-Scale
Radio-Pathomics Study [38.78350161086617]
Diagnosis of pulmonary lesions from computed tomography (CT) is important but challenging for clinical decision making in lung cancer related diseases.
Deep learning has achieved great success in computer aided diagnosis (CADx) area for lung cancer, whereas it suffers from label ambiguity due to the difficulty in the radiological diagnosis.
Considering that invasive pathological analysis serves as the clinical golden standard of lung cancer diagnosis, in this study, we solve the label ambiguity issue via a large-scale radio-pathomics dataset.
This retrospective dataset, named Pulmonary-RadPath, enables development and validation of accurate deep learning systems to predict invasive pathological labels with a non-
arXiv Detail & Related papers (2020-10-08T15:14:34Z) - Gleason Grading of Histology Prostate Images through Semantic
Segmentation via Residual U-Net [60.145440290349796]
The final diagnosis of prostate cancer is based on the visual detection of Gleason patterns in prostate biopsy by pathologists.
Computer-aided-diagnosis systems allow to delineate and classify the cancerous patterns in the tissue.
The methodological core of this work is a U-Net convolutional neural network for image segmentation modified with residual blocks able to segment cancerous tissue.
arXiv Detail & Related papers (2020-05-22T19:49:10Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.