Clinical Trials Logo

Clinical Trial Details — Status: Recruiting

Administrative data

NCT number NCT05300113
Other study ID # KY2017-340
Secondary ID
Status Recruiting
Phase
First received
Last updated
Start date May 1, 2022
Est. completion date December 1, 2024

Study information

Verified date March 2022
Source Huashan Hospital
Contact Jinsong Wu, Ph.D. & M.D.
Phone +86-21-52880000
Email wjsongc@126.com
Is FDA regulated No
Health authority
Study type Observational

Clinical Trial Summary

CNS tumor requires biopsy for pathological diagnosis, which is known as the "golden standard". We would like to achieve automated classification of brain tumors based on deep learning in digital histopathology images and molecular pathology results. We expect to develop an assistant system (including software and hardware), to help pathologists during their diagnosis for CNS tumor.


Description:

The aim of the study is to develop an automated pathological diagnosis system for CNS tumors based on deep learning technique. It is designed to firstly develop the best deep learning model for pathological diagnosis of CNS tumors, in order to improve the accuracy of pathological diagnosis. Then to be used clinically, reduce the workload and stress of neuropathologists and obtain the benefits for CNS tumor patients. Different CNS tumors including meningioma, glioma, lymphoma and other various tumors have their own different treatment principles and plans. For example, high grade glioma requires operational resection and post-operational chemo-radiotherapy. However, operational resection is not significant for improving prognosis in lymphoma patients, systematic chemotherapy will be performed after specific diagnosis based on biopsy. Therefore, in this study, an automated CNS tumor pathological diagnosis system will be developed to classify the different type of those tumors. At present, pathological diagnosis of CNS tumors is based on histopathological characteristics and molecular information after a systematic analyzed by pathologists. The accuracy of the diagnosis very much relies on the experience of the pathologists. However, to become a experienced and qualified pathologist requires years of training. Pathologists may give completely different diagnose outcome for the same patient. Thus, it is essential to develop a system that can assist pathologists. Deep learning is one of the most advanced techniques of artificial intelligence. In particular, the ability of image recognition is extremely powerful. Therefore, we are able to develop a model for histopathological section images based on deep learning. WHO Classification of CNS Tumors 2016 has included molecular markers as the important part of diagnosis. Hence, there will be an additional model of molecular pathology to be added to the system. Huashan Hospital has one of the largest CNS tumor biobank in China, which is the key part for deep learning, as it needs large amount of data. The case load of this study is able to show the representative and authoritative of those data. There will be three stages of the study. Stage 1 and 2 are supervised learning process. Stage 1 is to develop the best deep learning model for histopathological diagnosis of CNS tumors, we anticipate the accuracy for the first model to achieve at least 70%. The training data (pathological sections) will be provided by Huashan Hospital CNS tumor biobank. In the mean time, a micro-positioning platform is under investigation for the use of image collection. At the end of stage 1, we anticipate to integrate the model (software) and the platform (hardware) as the whole diagnose system for histopathological images. Stage 2 is to design a model for molecular pathological diagnosis for CNS tumors. The model will be trained by numerous amount of related molecular information extracted from those pathological sections. At the end of stage 2, we anticipate to combine stage 1 system and stage 2 model as the primary prototype. Stage 3 is known as the unsupervised learning process. By using the prototype developed after previous stages, the system will be used clinically. With the incoming of more patients and data, together with pathologists in the hospital, it will give its diagnosis. By comparing the results with pathologists, it will be able to self-learn and improve the accuracy as the time goes on. By the end of stage 3, we anticipate to have the system ready for independent clinical pathological diagnosis ability with the accuracy greater than 90%.


Recruitment information / eligibility

Status Recruiting
Enrollment 1000
Est. completion date December 1, 2024
Est. primary completion date December 1, 2023
Accepts healthy volunteers No
Gender All
Age group 18 Years to 75 Years
Eligibility Inclusion Criteria: The participants diagnosed with brain cancer by diagnosis of WHO 2016 classification of CNS tumors. Exclusion Criteria: Voluntarily quit

Study Design


Locations

Country Name City State
China Hushan Hospital, Fudan University Shanghai Shanghai

Sponsors (2)

Lead Sponsor Collaborator
Huashan Hospital United Imaging Healthcare

Country where clinical trial is conducted

China, 

References & Publications (8)

Ehteshami Bejnordi B, Veta M, Johannes van Diest P, van Ginneken B, Karssemeijer N, Litjens G, van der Laak JAWM; the CAMELYON16 Consortium, Hermsen M, Manson QF, Balkenhol M, Geessink O, Stathonikos N, van Dijk MC, Bult P, Beca F, Beck AH, Wang D, Khosla A, Gargeya R, Irshad H, Zhong A, Dou Q, Li Q, Chen H, Lin HJ, Heng PA, Haß C, Bruni E, Wong Q, Halici U, Öner MÜ, Cetin-Atalay R, Berseth M, Khvatkov V, Vylegzhanin A, Kraus O, Shaban M, Rajpoot N, Awan R, Sirinukunwattana K, Qaiser T, Tsang YW, Tellez D, Annuscheit J, Hufnagl P, Valkonen M, Kartasalo K, Latonen L, Ruusuvuori P, Liimatainen K, Albarqouni S, Mungal B, George A, Demirci S, Navab N, Watanabe S, Seno S, Takenaka Y, Matsuda H, Ahmady Phoulady H, Kovalev V, Kalinovsky A, Liauchuk V, Bueno G, Fernandez-Carrobles MM, Serrano I, Deniz O, Racoceanu D, Venâncio R. Diagnostic Assessment of Deep Learning Algorithms for Detection of Lymph Node Metastases in Women With Breast Cancer. JAMA. 2017 Dec 12;318(22):2199-2210. doi: 10.1001/jama.2017.14585. — View Citation

Esteva A, Kuprel B, Novoa RA, Ko J, Swetter SM, Blau HM, Thrun S. Dermatologist-level classification of skin cancer with deep neural networks. Nature. 2017 Feb 2;542(7639):115-118. doi: 10.1038/nature21056. Epub 2017 Jan 25. Erratum in: Nature. 2017 Jun 28;546(7660):686. — View Citation

Gulshan V, Peng L, Coram M, Stumpe MC, Wu D, Narayanaswamy A, Venugopalan S, Widner K, Madams T, Cuadros J, Kim R, Raman R, Nelson PC, Mega JL, Webster DR. Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs. JAMA. 2016 Dec 13;316(22):2402-2410. doi: 10.1001/jama.2016.17216. — View Citation

Litjens G, Kooi T, Bejnordi BE, Setio AAA, Ciompi F, Ghafoorian M, van der Laak JAWM, van Ginneken B, Sánchez CI. A survey on deep learning in medical image analysis. Med Image Anal. 2017 Dec;42:60-88. doi: 10.1016/j.media.2017.07.005. Epub 2017 Jul 26. Review. — View Citation

Louis DN, Perry A, Reifenberger G, von Deimling A, Figarella-Branger D, Cavenee WK, Ohgaki H, Wiestler OD, Kleihues P, Ellison DW. The 2016 World Health Organization Classification of Tumors of the Central Nervous System: a summary. Acta Neuropathol. 2016 Jun;131(6):803-20. doi: 10.1007/s00401-016-1545-1. Epub 2016 May 9. Review. — View Citation

Schmidhuber J. Deep learning in neural networks: an overview. Neural Netw. 2015 Jan;61:85-117. Epub 2014 Oct 13. Review. — View Citation

Wen PY, Huse JT. 2016 World Health Organization Classification of Central Nervous System Tumors. Continuum (Minneap Minn). 2017 Dec;23(6, Neuro-oncology):1531-1547. doi: 10.1212/CON.0000000000000536. Review. — View Citation

Yu KH, Zhang C, Berry GJ, Altman RB, Ré C, Rubin DL, Snyder M. Predicting non-small cell lung cancer prognosis by fully automated microscopic pathology image features. Nat Commun. 2016 Aug 16;7:12474. doi: 10.1038/ncomms12474. — View Citation

Outcome

Type Measure Description Time frame Safety issue
Primary Automated histopathological diagnosis outcome (software development) After supervised training, the software of the histopathological diagnosis of CNS tumor achieve at least 70% accuracy Nov,2018 - Nov,2019
Primary Positioning platform for microscope (hardware development) Hardware investigation for pathology section image collection, to automatically scan the section images. Nov,2018 - Nov,2019
Primary Combine automated molecular pathological diagnosis Molecular information being added to the histopathological diagnosis regarding to WHO 2016 CNS Tumor guide. Combine histopathology and molecular to give final diagnosis Nov,2019 - Jun,2020
Secondary Unsupervised training with more cases to improve the system Improve diagnosis accuracy of the system by continuous collection with a large number of CNS tumor cases from Huashan Hospital, which can be done without supervision. Nov,2019 - Nov,2022
See also
  Status Clinical Trial Phase
Active, not recruiting NCT06036394 - Artificial Intelligence in CNS Radiation Oncology
Withdrawn NCT05222165 - Study With Infigratinib in Subjects With Advanced Solid and CNS Tumors or Recurrent or Progressive Low-Grade Glioma With Selected FGFR1-3 Alterations Phase 1/Phase 2
Recruiting NCT03838042 - INFORM2 Study Uses Nivolumab and Entinostat in Children and Adolescents With High-risk Refractory Malignancies Phase 1/Phase 2
Completed NCT04334239 - Effectiveness of Care in Certified Cancer Centres in Germany
Completed NCT03434262 - SJDAWN: St. Jude Children's Research Hospital Phase 1 Study Evaluating Molecularly-Driven Doublet Therapies for Children and Young Adults With Recurrent Brain Tumors Phase 1
Withdrawn NCT05952687 - Trial of Idasanutlin and Selinexor Therapy for Children With Progressive/Relapsed AT/RT or Extra-CNS Malignant Rhabdoid Tumors Phase 1
Terminated NCT02988726 - Antineoplaston Therapy in Treating Patients With Neurofibroma and Schwannoma Phase 2
Recruiting NCT06322342 - Phase 2 Ascending Dose Safety and Efficacy Study of RVP-001, a Manganese-based MRI Contrast Agent Phase 2
Not yet recruiting NCT06441331 - Phase I Trial to Determine the Dose and Evaluate the PK of Lutetium Lu 177 Edotreotide Therapy in Pediatric Participants With SSTR-positive Tumors Phase 1
Recruiting NCT04706676 - Integrative Neuromuscular Training in Adolescents and Children Treated for Cancer N/A
Recruiting NCT04773782 - A Study of Avapritinib in Pediatric Patients With Solid Tumors Dependent on KIT or PDGFRA Signaling Phase 1/Phase 2
Active, not recruiting NCT04023669 - Evaluation of LY2606368 Therapy in Combination With Cyclophosphamide or Gemcitabine for Children and Adolescents With Refractory or Recurrent Group 3/Group 4 or SHH Medulloblastoma Brain Tumors Phase 1
Recruiting NCT05982691 - Development of Asian Consortium for Data Collection and Clinical Trial of CNS Tumors
Recruiting NCT04732065 - ONC206 for Treatment of Newly Diagnosed, Recurrent Diffuse Midline Gliomas, and Other Recurrent Malignant CNS Tumors Phase 1
Active, not recruiting NCT02684838 - Vigilant ObservatIon of GlIadeL WAfer ImplaNT Registry
Recruiting NCT05480904 - Characterizing Sleep Among Long-term Survivors of Childhood Cancer