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Matloob Khushi
United Kingdom
เข้าร่วมเมื่อ 30 มิ.ย. 2018
Stay tuned for updates from Dr. Matloob Khushi.
Lung Cancer Prediction Using Curriculum Learning Based Deep Neural Networks
This is presentation for the paper published ieeexplore.ieee.org/document/9581246
Abstract: The high incidence and low survival rate of lung cancers contribute to their high death count, and drive the development of lung cancer prediction models using demographic factors. The five year relative survival rate of small cell lung cancer in particular (6%) is four times less than that of non small cell lung cancer (23%), though no predictive models have been developed for it so far. This study aimed to expand on previous lung cancer prediction studies and develop improved models for general and small cell lung cancer prediction. Established machine learning models were considered, in addition to a novel curriculum learning based deep neural network. All models were evaluated using data from the National Cancer Institute's Prostate, Lung, Colorectal and Ovarian Cancer screening trial, with performance measured using the area under the receiver operator characteristic curve (AUROC). Random forest models were found to give the best performances in lung cancer prediction (bootstrap optimism corrected (BOC) AUROC =0.927 ), outperforming previous logistic regression models (BOCAUROC=0.859) . Additionally, curriculum learning based neural networks were shown to outperform all other model types for small cell lung cancer prediction in particular (AUROCs of 0.873 and 0.882 across two feature sets). To conclude, high-performance models were developed for general and small cell lung cancer prediction, and could help improve non-invasive lung cancer prediction in a clinical setting.
Abstract: The high incidence and low survival rate of lung cancers contribute to their high death count, and drive the development of lung cancer prediction models using demographic factors. The five year relative survival rate of small cell lung cancer in particular (6%) is four times less than that of non small cell lung cancer (23%), though no predictive models have been developed for it so far. This study aimed to expand on previous lung cancer prediction studies and develop improved models for general and small cell lung cancer prediction. Established machine learning models were considered, in addition to a novel curriculum learning based deep neural network. All models were evaluated using data from the National Cancer Institute's Prostate, Lung, Colorectal and Ovarian Cancer screening trial, with performance measured using the area under the receiver operator characteristic curve (AUROC). Random forest models were found to give the best performances in lung cancer prediction (bootstrap optimism corrected (BOC) AUROC =0.927 ), outperforming previous logistic regression models (BOCAUROC=0.859) . Additionally, curriculum learning based neural networks were shown to outperform all other model types for small cell lung cancer prediction in particular (AUROCs of 0.873 and 0.882 across two feature sets). To conclude, high-performance models were developed for general and small cell lung cancer prediction, and could help improve non-invasive lung cancer prediction in a clinical setting.
มุมมอง: 103
วีดีโอ
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Introducing the game-changer for MetaTrader 5: Free GPT-4 Copilot! This revolutionary tool harnesses the power of OpenAI's GPT-4, the most advanced AI language model, to supercharge your trading experience: Autogenerate MQL code: Say goodbye to endless lines of code! Simply describe your trading strategy and GPT-4 Copilot will write the MQL code for you, instantly. Explain existing code: Confus...
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Deep Learning approaches to Forex Trading Algorithms with Back Testing by Patrick McLennan supervised by Dr. Matloob Khushi 01 Dec 2022
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[URDU]Time-Series Data For Machine / Deep Learning
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Image Processing using Python library skimage.measure.regionprops
มุมมอง 10K2 ปีที่แล้ว
Why do we need to process images when we have so many fantastic deep learning algorithms? Quantification of the region of interest (ROI) including mitotic spindle and DNA during cell division, measuring telomere length and localisation of proteins. #MKImageProcessing
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Clustering and attention model based for Intelligent Trading
มุมมอง 5413 ปีที่แล้ว
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