Enhancing Trust in Clinically Significant Prostate Cancer Prediction with Multiple Magnetic Resonance Imaging Modalities
- URL: http://arxiv.org/abs/2411.04662v1
- Date: Thu, 07 Nov 2024 12:48:27 GMT
- Title: Enhancing Trust in Clinically Significant Prostate Cancer Prediction with Multiple Magnetic Resonance Imaging Modalities
- Authors: Benjamin Ng, Chi-en Amy Tai, E. Zhixuan Zeng, Alexander Wong,
- Abstract summary: In the United States, prostate cancer is the second leading cause of deaths in males with a predicted 35,250 deaths in 2024.
In this paper, we investigate combining multiple MRI modalities to train a deep learning model to enhance trust in the models for clinically significant prostate cancer prediction.
- Score: 61.36288157482697
- License:
- Abstract: In the United States, prostate cancer is the second leading cause of deaths in males with a predicted 35,250 deaths in 2024. However, most diagnoses are non-lethal and deemed clinically insignificant which means that the patient will likely not be impacted by the cancer over their lifetime. As a result, numerous research studies have explored the accuracy of predicting clinical significance of prostate cancer based on magnetic resonance imaging (MRI) modalities and deep neural networks. Despite their high performance, these models are not trusted by most clinical scientists as they are trained solely on a single modality whereas clinical scientists often use multiple magnetic resonance imaging modalities during their diagnosis. In this paper, we investigate combining multiple MRI modalities to train a deep learning model to enhance trust in the models for clinically significant prostate cancer prediction. The promising performance and proposed training pipeline showcase the benefits of incorporating multiple MRI modalities for enhanced trust and accuracy.
Related papers
- Radiomics-guided Multimodal Self-attention Network for Predicting Pathological Complete Response in Breast MRI [3.6852491526879687]
This study presents a model that predicts pCR in breast cancer patients using dynamic contrast-enhanced (DCE) magnetic resonance imaging (MRI) and apparent diffusion coefficient (ADC) maps.
Our approach extracts features from both DCE MRI and ADC using an encoder with a self-attention mechanism, leveraging radiomics to guide feature extraction from tumor-related regions.
arXiv Detail & Related papers (2024-06-05T04:49:55Z) - Enhancing Clinically Significant Prostate Cancer Prediction in T2-weighted Images through Transfer Learning from Breast Cancer [71.91773485443125]
Transfer learning is a technique that leverages acquired features from a domain with richer data to enhance the performance of a domain with limited data.
In this paper, we investigate the improvement of clinically significant prostate cancer prediction in T2-weighted images through transfer learning from breast cancer.
arXiv Detail & Related papers (2024-05-13T15:57:27Z) - Using Multiparametric MRI with Optimized Synthetic Correlated Diffusion Imaging to Enhance Breast Cancer Pathologic Complete Response Prediction [71.91773485443125]
Neoadjuvant chemotherapy has recently gained popularity as a promising treatment strategy for breast cancer.
The current process to recommend neoadjuvant chemotherapy relies on the subjective evaluation of medical experts.
This research investigates the application of optimized CDI$s$ to enhance breast cancer pathologic complete response prediction.
arXiv Detail & Related papers (2024-05-13T15:40:56Z) - Cancer-Net BCa-S: Breast Cancer Grade Prediction using Volumetric Deep
Radiomic Features from Synthetic Correlated Diffusion Imaging [82.74877848011798]
The prevalence of breast cancer continues to grow, affecting about 300,000 females in the United States in 2023.
The gold-standard Scarff-Bloom-Richardson (SBR) grade has been shown to consistently indicate a patient's response to chemotherapy.
In this paper, we study the efficacy of deep learning for breast cancer grading based on synthetic correlated diffusion (CDI$s$) imaging.
arXiv Detail & Related papers (2023-04-12T15:08:34Z) - 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) - Enhancing Clinical Support for Breast Cancer with Deep Learning Models
using Synthetic Correlated Diffusion Imaging [66.63200823918429]
We investigate enhancing clinical support for breast cancer with deep learning models.
We leverage a volumetric convolutional neural network to learn deep radiomic features from a pre-treatment cohort.
We find that the proposed approach can achieve better performance for both grade and post-treatment response prediction.
arXiv Detail & Related papers (2022-11-10T03:02:12Z) - An Enhanced Deep Learning Technique for Prostate Cancer Identification
Based on MRI Scans [0.0]
InceptionResNetV2 deep learning model used for this purpose has average accuracy equals to 89.20%.
The experimental results of this proposed new deep learning technique represent promising and effective results compared to other previous techniques.
arXiv Detail & Related papers (2022-08-01T03:16:10Z) - Implementation of Convolutional Neural Network Architecture on 3D
Multiparametric Magnetic Resonance Imaging for Prostate Cancer Diagnosis [0.0]
We propose a novel deep learning approach for automatic classification of prostate lesions in magnetic resonance images.
Our framework achieved the classification performance with the area under a Receiver Operating Characteristic curve value of 0.87.
Our proposed framework reflects the potential of assisting medical image interpretation in prostate cancer and reducing unnecessary biopsies.
arXiv Detail & Related papers (2021-12-29T16:47:52Z) - CorrSigNet: Learning CORRelated Prostate Cancer SIGnatures from
Radiology and Pathology Images for Improved Computer Aided Diagnosis [1.63324350193061]
We propose CorrSigNet, an automated two-step model that localizes prostate cancer on MRI.
First, the model learns MRI signatures of cancer that are correlated with corresponding histopathology features.
Second, the model uses the learned correlated MRI features to train a Convolutional Neural Network to localize prostate cancer.
arXiv Detail & Related papers (2020-07-31T23:44:25Z)
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.