Defining the microenvironmental contexture of the biopsy-naive, MRI-characterized prostate.

Lead Research Organisation: University College London
Department Name: Targeted Intervention

Abstract

Prostate cancer is commonly diagnosed through a blood test and a needle biopsy through the rectum. Although this random sampling of the prostate picks up some cancers, many can be missed. In addition, biopsies through the rectum carry a significant risk of infection and bleeding.

In contrast, MRI is a promising way to image the prostate: tumours that are likely to require treatment can be seen and men without visible tumours can be reassured. MRI also targets the urologist's biopsy needle through the skin to suspicious prostate areas with accuracy, efficiency and reduces the risk of any side effects.

It is estimated that in men who are being tested for prostate cancer, a suspicious area on MRI that looks like it might be a tumour is not actually cancer in up to 50% of cases. These so-called false-positive MRIs lead to men suffering the physical and psychological consequences of a biopsy without any actual benefit.

We do not know the how these false-positive MRIs come about, but there is evidence that suggests that cells of the immune system and the cells surrounding prostate glands (called the "stroma") play a role. These inflammatory and stromal cells influence the way tissue grows and appears and can contribute towards a positive MRI without cancer being present.

Many researchers also believe that certain types of inflammation contribute to the transformation of prostate cells into cancerous cells, as well as encouraging the growth of established tumours. Truly understanding these biological processes are necessary for developing new ways of preventing or treating early prostate cancer without surgery.

Unfortunately, few resources are being allocated to define the links between inflammation, stromal cells, prostate cancer and MRI imaging.

In a one-of-a-kind clinical trial called PROMIS organised by UCL investigators, men with suspected cancer had an MRI followed by extensive biopsies of their whole prostate. For this project, we identified PROMIS participants who have suspicious areas on MRI but no cancer on biopsy. We were surprised to see that most of these men had inflammation and stroma in their tissue, sometimes associated with cellular changes that are seen before cancer.

My goal for this fellowship is to characterize inflammation and stroma in the biopsy samples of PROMIS participants, along with any pre-cancerous changes. This will be done through immunohistochemistry, a powerful technique where antibodies that recognise different immune cells are used to visualise individual cells in the prostate samples. I will also analyse the MRI images of men on PROMIS using specialized software and look for imaging features that can differentiate cancer from inflammation or other conditions. Finally, I will combine tissue findings with MRI images and understand how the two are associated.

The proposed research will allow us to tell whether a suspicious area on an MRI is unlikely to be prostate cancer. This could drastically reduce the number of unnecessary biopsies and provide reassurance to men who are being tested for prostate cancer for the first time. We will also understand how inflammation and an altered prostate environment might promote cancer development in the first place. This will allow us to develop strategies that prevent cancer in its very early stages when it is most easily treated and cured.

Technical Summary

Aims:
1. Define the microenvironmental contexture of non-cancerous tissue within the naïve prostate.
2. Establish the scientific prerequisites for the deconvolution of positive MRIs in biopsy-naïve men without clinically significant tumours.

Objectives:
1. Define the constitution of non-cancerous biopsy tissue derived from PSA-screened, biopsy-naïve prostates of PROMIS participants with and without clinically significant tumours.
2. Decompose the microenvironmental contexture of the same tissue by specifically identifying immune cell subsets, cytokines, stromal components and cancer precursors.
3. Extract quantitative features from PROMIS MRIs that effectively discriminate non-cancer from cancer.
4. Create stromal immunohistochemical and transcriptional maps that can be aligned to MRI regions of interest and investigate their relationship with MRI visibility.

Methodology:
I will annotate inflammation, stroma and cancer precursors on digital H&E images of PROMIS biopsy cores. I will also perform immunohistochemistry and in situ hybridization in the same tissue to identify specific immune cell subsets (including T and B lymphocytes, NK cells and macrophages), Th1/Th2 cytokines, stromal proteins and HGPIN or ASAP. Stromal transcriptomic signatures will be obtained through tissue dissection, RNA extraction and sequencing and, finally, quantitative feature analysis of MRI areas and their alignment with tissue findings will be performed using specialized software in collaboration with imaging experts.

Scientific and medical opportunities:
The ability to identify pro-tumourigenic microenvironments in patients with and without significant cancer will reform existing diagnostic pathways and expedite novel research on early disease prevention or modulation. The extraction of MRI features that discriminate inflammation from cancer will also spare some men from unwarranted biopsies.

Planned Impact

This research project will benefit:

1. Patients with suspected cancer who are candidates for biopsy. In a representative subgroup of biopsy-naïve PROMIS participants without clinically significant tumours, over 60% had an indeterminate or clearly visible lesion on MRI. Such MRI phenotypes are not well defined and these patients would receive a targeted biopsy in the clinical context. As risk assessment with MRI and MRI-targeted biopsies are becoming the standard for men with suspected cancer (Kasivisvanathan et al, 2018), MRI features that non-invasively discriminate cancer from non-cancer are urgently needed. The work proposed for this fellowship will derive such features from MRIs of well-interrogated, biopsy-naïve prostates and could help men avoid unwarranted biopsies in the future.

2. Patients with suspected cancer who had a biopsy. PSA testing has resulted in a diagnostic migration towards smaller, low-grade disease that is often actively surveyed (Welch and Albertsen, 2009). Disease-modulating strategies controlling clinically insignificant disease and preventing progression are becoming increasingly necessary, but non-existent. This is primarily because of a gap in our understanding of the prostatic microenvironmental contexture in men with suspected cancer. The proposed fellowship will establish scientific prerequisites for bridging that gap and designing disease modulating strategies.
In addition, inflammation is an enabling characteristic of malignancy and a common finding on biopsy, but the implications of its presence are poorly understood. Defining a pro-tumourigenic profile in the prostate could have prognostic utility for men who had a biopsy and stimulate further research on prostate cancer prevention.
Collateral psychological benefits of (1) and (2) will be substantial for patients and promote quality of life.

3. Policy makers and charities. Prostate Cancer UK clearly states there is currently no effective way to prevent prostate cancer (prostatecanceruk.org/prostate-information/are-you-at-risk/can-i-reduce-my-risk). The proposed work is, therefore, necessary. Existing NICE recommendations on prostate MRI interpretation and diagnostic standards could also be substantially upgraded.

4. Host institution. Within UCL and UCLH, knowledge of prostate cancer biology will be expanded and more research ideas will be generated, allowing applications for further research funding. This would improve the group's global standing and expand collaborations with other leading institutions.

5. Researchers and academic community. Characterizing prostate tissue derived from this unique cohort will provide a deeper mechanistic understanding of the disease process and new ways of analyzing microenvironmental determinants in men undergoing a biopsy. Protocols and results generated during my fellowship can be disseminated according to the Communications Plan.

6. Industry. Deriving MRI features that discriminate cancerous from non-cancerous areas will be of great interest to the imaging industry. This could lead to further funding and new commercial applications. Defining immune and stromal perturbations that are amenable to intervention will also be of great interest to the biotechnology and pharmaceutical industries. UCL is perfectly positioned to take advantage of such commercial possibilities through its UCL Business Branch.

7. Economy. Effective risk stratification, prevention of unnecessary biopsies and the adoption of preventive strategies will have a positive economic impact on the national health service and the UK economy as a whole. In addition, the industrial impact outlined in (6) will further increase the global financial competitiveness of the UK.

Although all these aims are ambitious, they could be achievable 5-10 years after the completion of my fellowship.

Publications

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Fiard G (2020) What to expect from a non-suspicious prostate MRI? A review. in Progres en urologie : journal de l'Association francaise d'urologie et de la Societe francaise d'urologie

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Huet E (2019) Stroma in normal and cancer wound healing. in The FEBS journal

 
Description Alliance for Cancer Early Detection Project
Amount £1,000,000 (GBP)
Funding ID EDDAMC-2021\100011 
Organisation Cancer Research UK 
Sector Charity/Non Profit
Country United Kingdom
Start 01/2023 
End 01/2026
 
Description CRUK International Cancer Early Detection Alliance (ACED) Pilot Award 2021
Amount £89,021 (GBP)
Funding ID EDDAMC-2021\100001 
Organisation University College London 
Sector Academic/University
Country United Kingdom
Start 02/2022 
End 02/2023
 
Description Defining the microenvironmental and molecular contexture of the mpMRI-characterised prostate.
Amount £200 (GBP)
Funding ID 2ES4\100034 
Organisation Alan Turing Institute 
Sector Academic/University
Country United Kingdom
Start 01/2020 
End 09/2020
 
Description Mason Medical Research Trust
Amount £15,000 (GBP)
Organisation University College London 
Sector Academic/University
Country United Kingdom
Start 03/2020 
End 05/2021
 
Description The longitudinal dynamics of MRI lesions in the human prostate.
Amount £2,000 (GBP)
Funding ID 2PDEA\100028 
Organisation Alan Turing Institute 
Sector Academic/University
Country United Kingdom
Start 03/2022 
End 10/2022
 
Description Vasilis Stavrinides to visit Cambridge
Amount £38,800 (GBP)
Funding ID EDDAMC-2021\100008 
Organisation Cancer Research UK 
Sector Charity/Non Profit
Country United Kingdom
Start 05/2022 
End 04/2023
 
Description Young Investigator Award
Amount $225,000 (USD)
Funding ID 21YOUN04 
Organisation Prostate Cancer Foundation 
Sector Charity/Non Profit
Country Global
Start 02/2023 
End 02/2026
 
Title Discrimination of True and False Positive MRI in men with suspected prostate cancer and indeterminate (Likert 3) MRI lesions 
Description The data were collected from men recruited at UCLH during the PROMIS study with indeterminate MRI phenotypes. A logistic regression model was developed using PSA density and apparent diffusion coefficient (ADC) for discriminating men with significant cancer from those without. The model (along with a decision curve analysis) was published in European Urology (https://doi.org/10.1016/j.eururo.2020.09.043) 
Type Of Material Computer model/algorithm 
Year Produced 2021 
Provided To Others? Yes  
Impact Roadmap for discriminating true and false positive prostate MRIs and deciding whether biopsy is warranted 
 
Title Joint longitudinal-survival model for outcome prediction in imaging-led active surveillance for prostate cancer 
Description This was the first application of a joint model in an MRI-led AS cohort - published in 2021: 10.1038/s41391-021-00373-w 
Type Of Material Computer model/algorithm 
Year Produced 2021 
Provided To Others? Yes  
Impact Tweeted in EAU 2022 
 
Title UCLH MRI-based active surveillance cohort. 
Description I have created records for 672 men who have enrolled in the UCLH active surveillance programme. This unique cohort of men with low-risk prostate cancer is MRI-led and prostate biopsies are omitted in favour of regular imaging. 
Type Of Material Database/Collection of data 
Year Produced 2019 
Provided To Others? Yes  
Impact I have demonstrated that Gleason grade and MRI visibility are determinants of AS discontinuation, event-free and treatment-free survival. These results were presented last year in EAU and I am presenting an additional abstract at the 2020 AUA meeting in Washington, DC this May. 
 
Description Centre for Medical Image Computing 
Organisation University College London
Country United Kingdom 
Sector Academic/University 
PI Contribution CMIC is a computing imaging group at UCL specialising in the analysis of MR images. For my project I have annotated false positive lesions in prostate MRIs and have initiated a collaboration with CMIC in order to them produce lesion density maps.
Collaborator Contribution CMIC have provided the technical expertise to convert the annotations provided to lesion density maps. These have now been included in a manuscript draft for submission to European Urology.
Impact Manuscript on the false-positive lesions in biopsy-naive men has now been prepared and is being submitted to European Urology.
Start Year 2019
 
Description Collaboration with Blundell Lab, Cambridge 
Organisation University of Cambridge
Department Cambridge Neuroscience
Country United Kingdom 
Sector Academic/University 
PI Contribution I am providing the possibility of working on a unique set of prostate cancer surveillance biopsy material
Collaborator Contribution I am visiting UoC and the lab to learn basic principles of DNA sequencing and bioinformatics
Impact Preliminary experimental results produced; Abstract to be submitted in ESUR23
Start Year 2022
 
Description Institute of Cancer Research - Computational Pathology Group 
Organisation Institute of Cancer Research UK
Country United Kingdom 
Sector Academic/University 
PI Contribution I have developed a collaboration with the Sottoriva Computational Pathology Group at the Institute of Cancer research. Specifically, we are trying to develop a new deep learning classifier for stroma and immune cells in prostatic tissue using H&E/IHC digital images. I have now annotated more than 25,000 cells of various types on anonymised images that are relevant to my fellowship, and have organised meetings with two consultant pro-pathologists to check the annotations. This material is pivotal for the ICR group as they can use it as a training dataset.
Collaborator Contribution The ICR group has provided substantial expertise in deep learning analysis of digital pathology images. Their contribution will be to use training data provided (see above) to build a reliable automatic classifier of prostate cells that can then be used for my project (which involves the analysis of H&E or IHC images) and beyond.
Impact No impact yet - data analysis pending.
Start Year 2019
 
Description UCL-OHSU mIF partnership 
Organisation Oregon Health and Science University
Country United States 
Sector Academic/University 
PI Contribution Collaboration between UCL and OHSU on multiplex immunofluorescence techniques.
Collaborator Contribution Intellectual input, advice on material to be used to mIF applications.
Impact Application for funding from the CRUK Alliance for Cancer Early Detection (Pilot Award application submitted March 2021).
Start Year 2021
 
Description UCLH Pathology 
Organisation University College London Hospitals NHS Foundation Trust
Country United Kingdom 
Sector Academic/University 
PI Contribution I am collaborating with consultant uro-pathologists at UCLH in order to annotate immune cells, stroma, epithelial areas and cancer on prostate biopsy digital images that are relevant to my proposal. I have provided the material, organised the sessions, and strengthened the links between UCLH Pathology and the Whitaker lab at Charles Bell House.
Collaborator Contribution UCLH Pathology has been extremely helpful in checking my annotations on digital pathology images.
Impact Pending.
Start Year 2019
 
Description "Big Debate: Imaging vs Biology" 
Form Of Engagement Activity A talk or presentation
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Postgraduate students
Results and Impact Prostate Cancer UK ACED Summer School (Aug 12, 2021)
Year(s) Of Engagement Activity 2021
 
Description Delineating the microenvironmental contexture of radiologically progressing prostate lesions 
Form Of Engagement Activity A talk or presentation
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Postgraduate students
Results and Impact ACED Prostate Cancer Symposium (May 25, 2022)
Year(s) Of Engagement Activity 2022
 
Description EAU session: Active Surveillance for intermediate risk prostate cancer: What urologists and patients should know. 
Form Of Engagement Activity A talk or presentation
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Professional Practitioners
Results and Impact EAU debate (European Association of Urology Congress, 7th of July 2021): Active Surveillance for intermediate risk prostate cancer: What urologists and patients should know.
Year(s) Of Engagement Activity 2022
 
Description The transcriptomic evolution of radiologically progressing prostate cancer 
Form Of Engagement Activity A talk or presentation
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Industry/Business
Results and Impact NanoString Spatial Answers Trilogy (Apr 20, 2021)
Year(s) Of Engagement Activity 2021