Personalised lung cancer treatment through outcomes predictions and patient stratification

Lead Research Organisation: University College London
Department Name: Medical Physics and Biomedical Eng

Abstract

In this fellowship, I will use a radical new approach to improve the radiotherapy treatment of patients suffering from inoperable non-small cell lung cancer (NSCLC). NSCLC is a cancer of unmet need for which the actual chemo-radiotherapy treatment has remained mostly unchanged for more than 30 years, with a poor 16.4% 5-year survival. This poor survival is caused by the limitation of the 'one-dose-fits-all' paradigm which neglects the diverse spectrum of clinical presentation in NSCLC. To improve the treatment, my group and I will harness the capacities of novel cutting-edge artificial intelligence techniques combined with a massive retrospective database of patients data to answer a fundamental question about lung cancer which is "How will the disease progress?". More precisely, the deep learning approach will be used to extract general trends relating patient's data features (histopathology, anatomy, tumour stage, tumour activity, treatment plan) to an outcome (death, recurrence, secondary fibrosis, heart failure and success). The methodology output will then be used for two endpoints of the study. It will first be directly used to inform and personalise the radiotherapy treatment planning strategy to improve patient survival. It will also serve as a basis to define a new stratification procedure for lung cancer patients to refine the clinical trials selection system. This framework will enact a paradigm change in treatment planning for radiotherapy and has the potential to enable a jump in performance of the treatment by tailoring the dose to the patient; thereby lowering the secondary effects and improving overall survival.

Planned Impact

The primary beneficiaries of this project are people suffering from inoperable stage III NSCLC, through the hypothesised jump in survival enabled by the personalised therapy. Specific steps and objectives have been outlined in this fellowship to reach the patient which includes the development of a robust Code of Practice and a clinical trial. Furthermore, by directly involving patients, clinicians, and end-users in the development of the framework and the design of the clinical trial, I will ensure that the framework reaches the beneficiaries.

Additional beneficiaries include 1) academics in the fields of medical physics, radiotherapy and oncology who will benefit from the research advance in each of these specific fields. High-impact open-access publication and conference presentation will be sought in the field of diffeomorphism, machine learning, and personalised dosimetry. An international workshop will be organised to disseminate our results and to gather experts in the field who will provide critical feedback. Although every aspect of this projects is covered by the established collaborations, I will work with any interested new collaborators, as long as appropriate protection of the intellectual property on the developed framework is defined, which I will seek in collaboration with the UCL Business office.

Health services will benefit from the reduced cost of treatment, and both clinicians and carers will benefit from the increased efficiency of the treatment. To ensure that the technique developed aligns with the need and tolerance of the patients and carers, I will circulate the ideas and consult a patient and public involvement group, who will be selected with the UCL Medical Research Council Clinical Trials Units PPI Groups, that will help transition the framework to enable personalisation and collaboration in care decision making agenda. This group will include patients, carers and the general public interested in radiation oncology who will provide feedback on the framework, including advice on the research idea, study design, developing accessible information sheets and dissemination.

Publications

10 25 50
 
Description One of our pathology algorithms has a significantly high capacity of producing sarcoma diagnosis, with an accuracy of 88% on one diagnosis, and a accuracy of 99% if three diagnosis are involved.

We are currently in the process of seeking funding to evaluate it against pathologists in 15 NHS Trusts.
Exploitation Route After extensive validation against pathologists, we will seek industrial partners to help us bring this new AI algorithm to clinical usage.
Sectors Healthcare

 
Description Algorithmic development of proton radiography for image-guided proton radiotherapy of lung cancer
Amount € 224,933 (EUR)
Funding ID H2020-MSCA-IF-2020 101023220 
Organisation Marie Sklodowska-Curie Actions 
Sector Charity/Non Profit
Country Global
Start 09/2021 
End 10/2023
 
Description An artificial intelligence framework to classify soft tissue tumours
Amount £50,000 (GBP)
Funding ID SUK18.2021: 
Organisation Sarcoma UK 
Sector Charity/Non Profit
Country United Kingdom
Start 04/2022 
End 04/2023
 
Description Computational pathology to risk stratify solitary fibrous tumours (SFT): an integrated approach using digital pathology, machine learning and genetics.
Amount £40,000 (GBP)
Organisation Pathological Society 
Sector Charity/Non Profit
Country United Kingdom
Start 09/2021 
End 02/2022
 
Description EPSRC Doctoral Training Partnerships Funding
Amount £140,000 (GBP)
Organisation Engineering and Physical Sciences Research Council (EPSRC) 
Sector Public
Country United Kingdom
Start 09/2023 
End 09/2027
 
Description Personalised lung cancer treatment through outcomes predictions and patient stratification
Amount £1,149,959 (GBP)
Funding ID MR/T040785/1 
Organisation United Kingdom Research and Innovation 
Sector Public
Country United Kingdom
Start 09/2020 
End 09/2024
 
Title - Organized AI Framework for Radiology Outcome Prediction, Classification and Object Detection (2021) 
Description Organized AI framework that allows inputting a variety of modalities from an online catalogue (XNAT platform hosted at UCL) and perform AI training, using state of the art models, to correlate outcomes to a variety of clinical and imaging factors. These framework will underpin all activities in our future research in AI for radiology, and will be the building block towards many high-impact publication. 
Type Of Material Improvements to research infrastructure 
Year Produced 2021 
Provided To Others? Yes  
Impact Uniformization of AI research at UCL for many groups under the same framework, direct access through the XNAT platform to the clinician that can throw AI jobs without requiring deep knowledge of programmation. Building block for future research. 
URL https://github.com/cacof1/OutcomePrediction
 
Title Organized AI Framework for Pathology Outcome Prediction, Classification and Object Detection 
Description In collaboration with the UCL Department of Pathology, we developed and object analysis, classification and prognostic AI model to be used on whole slide images. The model will be used for analysis on both the sarcoma aspect of research (in collaboration with Prof. Adrienne Flannagan), as well as with the Non-Small cell Lung Cancer Biopsy currently acquired to help improve prognostic on outcome. The model uses multi-zoom and multi-model input to enable state-of-the-art prediction, and is equipped with the latest development in image preprocessing for pathology. 
Type Of Material Improvements to research infrastructure 
Year Produced 2021 
Provided To Others? Yes  
Impact The model is already being used in the development of two manuscripts: - Mitosis Detection for Solitary Fibrous Tumour using Anti-phosphorylated Histone H3 (pHH3) Antibodies and Digital Pathology - Predicting soft tissue sarcoma diagnosis with deep learning And will be the basis for pathology analysis of our future work. 
URL https://github.com/cacof1/DigitalPathologyAI
 
Title MODAL: Multi-Omics Data Lake 
Description Dataset collection of Stage III Non-Small Cell Lung Cancer Patient including: - Anatomical images (CT, CBCT, MRI) - Functional Imaging (PET) - Pathology Imaging (Histopathology slides) - Clinical Features 
Type Of Material Database/Collection of data 
Year Produced 2022 
Provided To Others? No  
Impact This unified database creation request has been sent to the HRA for approval to start collecting a large amount of fully anonymised patient data to be used for AI training and inference. 
 
Title UK-Based Sarcoma WSI Database 
Description Database of 10k scanned sarcoma whole-slide images, of 22 different diagnosis. This database is not yet public as we are waiting for our own publications to come out, as well as for ethical regulatory approval. 
Type Of Material Database/Collection of data 
Year Produced 2023 
Provided To Others? No  
Impact The large scale database has allowed us to significantly improves the results of our AI algorithms and to produce state-of-the-art results that are incorporated into our latest model. This model will be tested against pathologist and, pending positive results, incorporated in clinical practice through industrial partners. 
 
Description Data Collection - Royal Free Hospital 
Organisation Royal Free London NHS Foundation Trust
Country United Kingdom 
Sector Public 
PI Contribution Establish an HRA-approved collaboration with the Royal Free hospital to collect non-small cell lung cancer data as well as thoracic cancer and liver cancer.
Collaborator Contribution They are providing in-kind clinical fellow time to help identify patients that are relevant to our data-study, to be added to our extensive database to improve the AI model outputs.
Impact No outcomes yet as we are collecting, curating, and aggregating in the database the new cohort of patients data.
Start Year 2022
 
Description Radiology/Pathology AI Outcome Prediction 
Organisation Magna Græcia University
Country Italy 
Sector Academic/University 
PI Contribution This collaboration aims at developing a partnership and framework for the prediction of outcome and toxicity in lung cancer. It includes expertise from UCL (Department of Medical Physics - Radiology, Cancer Institute - Histopathology data) as well as the University of Magna Graecia for image manipulation and analysis algorithms. Our contribution is to lead the development of the AI framework for collaboration and to manage the expected outcome and publication between each partners. We are spearheading the AI software development. UCL Medical Physics is mostly developing the framework for Radiology and Pathology (see Methodology section). We also led the ethical aspect of the project for data acquisition in the hospital, including a data request from the Health Research Authority.
Collaborator Contribution The contribution of the UCL Cancer Institute is to provide domain knowledge and images for histopathology and to help develop and guide the AI algorithms. They have provided several pathologist trainees to help inject domain knowledge in the form of hand-drawn annotation, and we have co-led grants together in the development of AI for histopathology. The contribution of the University of Magna Graecia is to provide image regularization software for radiology, which will help us minimize data difformation between patients and improve accuracy.
Impact Sarcoma UK Grant Jean Anderson Pathology Society Grant Many publications under preparation
Start Year 2021
 
Description Radiology/Pathology AI Outcome Prediction 
Organisation University College London
Department UCL Cancer Institute
Country United Kingdom 
Sector Academic/University 
PI Contribution This collaboration aims at developing a partnership and framework for the prediction of outcome and toxicity in lung cancer. It includes expertise from UCL (Department of Medical Physics - Radiology, Cancer Institute - Histopathology data) as well as the University of Magna Graecia for image manipulation and analysis algorithms. Our contribution is to lead the development of the AI framework for collaboration and to manage the expected outcome and publication between each partners. We are spearheading the AI software development. UCL Medical Physics is mostly developing the framework for Radiology and Pathology (see Methodology section). We also led the ethical aspect of the project for data acquisition in the hospital, including a data request from the Health Research Authority.
Collaborator Contribution The contribution of the UCL Cancer Institute is to provide domain knowledge and images for histopathology and to help develop and guide the AI algorithms. They have provided several pathologist trainees to help inject domain knowledge in the form of hand-drawn annotation, and we have co-led grants together in the development of AI for histopathology. The contribution of the University of Magna Graecia is to provide image regularization software for radiology, which will help us minimize data difformation between patients and improve accuracy.
Impact Sarcoma UK Grant Jean Anderson Pathology Society Grant Many publications under preparation
Start Year 2021
 
Description Third ion imaging workshop 2022 in Munich, Germany 
Form Of Engagement Activity A formal working group, expert panel or dialogue
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Professional Practitioners
Results and Impact The 3rd Ion Imaging Workshop took place on October 13th and 14th at the LMU main building in Munich and was following workshops in Lyon in 2018 and Manchester in 2019. The workshop attracted 50 registered participants, which marked an increased participation compared to Lyon (36 participants) and Manchester (42 participants). The workshop had an international character, with participants from Norway, France, Italy, Germany, Switzerland, the United Kingdom, the Netherlands, Austria, and the United States. External funding was instrumental in ensuring a well-attended workshop, allowing the organizing committee to invite speakers.
Year(s) Of Engagement Activity 2022
URL https://ionimaging.org/ws2022munich-summary/