Clinical Trial Details
— Status: Not yet recruiting
Administrative data
NCT number |
NCT05676788 |
Other study ID # |
HSI_01 |
Secondary ID |
|
Status |
Not yet recruiting |
Phase |
N/A
|
First received |
|
Last updated |
|
Start date |
April 2023 |
Est. completion date |
June 2027 |
Study information
Verified date |
January 2023 |
Source |
LungenClinic Grosshansdorf |
Contact |
David B Ellebrecht, MD |
Phone |
+4941026012201 |
Email |
d.ellebrecht[@]lungenclinic.de |
Is FDA regulated |
No |
Health authority |
|
Study type |
Interventional
|
Clinical Trial Summary
The purpose of this study is the identification of the intersegmental plane and navigation
during sublobar pulmonary resections in lung cancer using Hyperspectral Imaging, the
comparison with ICG fluorescence intersegmental plane identification, and the establishment
of automatic intersegmental plane navigation using machine learning strategies for
intraoperative navigation.
Description:
Lung cancer is the leading cause of cancer-related death worldwide. Due to the generalization
of screening strategies, especially for risk populations, an increasing number of lung cancer
cases are detected in an early stage. In this regard, lung cancer is also increasingly
diagnosed in patients with impaired pulmonary function. For preserving lung function and
reducing complication incidence, pulmonary segmentectomies are currently evaluated in this
cohort. Thus, the latest version of the German guideline for the prevention, diagnosis,
treatment and follow-up of lung cancer recommends segmentectomy for patients with impaired
pulmonary function in tumor stage I/II. However, the identification of the intersegmental
plane - the key step of segmentectomy - remains challenging. Inaccurate recognition of the
intersegmental plane may lead to dysfunction of the remaining lung tissue, mismatching of
ventilation or blood flow, or long-term air leakage after surgery, which even requires
unplanned secondary surgery. Indocyanine green (ICG) is one the latest evaluated
identification methods and is considered as gold standard. Hyperspectral Imaging (HSI) - a
newly established intraoperative imaging technique - enables a non-invasive evaluation of
tissue perfusion and the discrimination of pulmonary tissue with different tissue perfusion
during segmentectomies.
The purpose of this prospective, single-center, non-inferiority IDEAL Stage 2b study is the
identification of the intersegmental plane and navigation during sublobar pulmonary
resections in lung cancer using Hyperspectral Imaging, the comparison with ICG fluorescence
intersegmental plane identification, and the establishment of automatic intersegmental plane
navigation using machine learning strategies for intraoperative navigation.
To address this, the intersegmental plane will be detected by both HSI and ICG-fluorescence
during pulmonary segmentectomies and the correspondence of the two identification methods
will be compared with one another. Using machine learning strategies, the detection of
perfused and non-perfused pulmonary tissue and intersegmental plane will be analyzed.
Finally, the investigators will study motion tracking for the improvement of future HSI
illustrations during surgery.
The hypothesis of this study is that HSI could improve the intraoperative navigation during
pulmonary segmentectomies providing as reliable intersegmental plane identification as the
gold standard of indocyanine green fluorescence. In this case, an intravenous application of
fluorescent dye would not be required anymore for the intersegmental plane identification.
In the case of complex segment resection, a large amount or repeated use of ICG is necessary
due to its short pulmonary circulation time. Multiple use of ICG may result in ICG entering
the target lung tissue through the bronchial circulation and increases the risk of adverse
drug reactions of ICG. In contrast, the advantages of HSI would be a faster and repetitive
measurement during surgery. There will be a potential for reducing the total measurement time
during intersegmental plane dissection (10 seconds vs. 3 minutes / measurement) and
consequently patient's burden. In this context, several studies of HSI-based perfusion
measurement during esophageal or colorectal surgery showed already an improved patients'
outcome. Furthermore, HSI can be used for surgery on patients with hyperthyroidism or
impaired renal or hepatic function.
In order to support this hypothesis, a prospective non-inferiority trial design will be used
in this study. To ensure the quality of data acquisition and reporting, the study will be
conducted in accordance with the IDEAL reporting guidelines. During pulmonary
segmentectomies, the intersegmental plane will be identified by both HSI and ICG
fluorescence. The determined HSI intersegmental margin will be benchmarked against the ground
truth ICG fluorescence and the feasibility and reproducibility of HSI and ICG mapping will be
studied.
Machine learning methods have greatly improved the interpretation of subtle patterns in
medical image data. Convolutional neural networks (CNNs) can be considered state-of-the-art
for classification and segmentation of medical images. The investigators will extend
CNN-based methods for HSI classification and particularly study patch-based differentiation
between perfused and non-perfused tissue using ICG and HSI data acquired at the same
position. A further challenge is the relatively slow acquisition of HSI (10
seconds/measurement), which makes it prone to motion artifacts, e.g., due to pulsatile
motion. To address this, the investigators will study motion tracking, which is also relevant
for the future illustration of the segment boundary during surgery.
Machine learning approaches and particularly CNNs allow to directly optimize classifiers
based on actual clinical data and the spectral dimension can be handled in a straightforward
fashion. Moreover, as a versatile method for image processing, CNNs can also be used for
localization and motion compensation during intraoperative imaging, e.g., they can be trained
to detect image features and their motion in red/green/blue image streams. This is
interesting for the proposed HSI data acquisition, which is based on a sequence of
measurements which are sensitive to tissue motion.