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公开(公告)号:US20210327055A1
公开(公告)日:2021-10-21
申请号:US16889412
申请日:2020-06-01
Applicant: Qure.ai Technologies Private Limited
Inventor: Preetham Putha , Manoj Tadepalli , Bhargava Reddy , Tarun Raj , Ammar Jagirdar , Pooja Rao , Prashant Warier
IPC: G06T7/00 , G06T7/70 , G06K9/62 , G06T7/11 , G06K9/32 , G06F40/20 , A61B6/00 , C12Q1/689 , G16H10/40 , G16H30/40 , G16H50/20 , G16H50/50 , G16H50/70 , G16H50/80
Abstract: This disclosure generally pertains to systems and methods for detection of infectious respiratory diseases by implementation of an automated X-rays-based triage approach alongside algorithmic clinical sample pooling for molecular diagnosis. Certain embodiments relate to methods for the development of deep learning algorithms that perform machine recognition of specific features and conditions in chest X-ray imaging data. The chest X-ray imaging data is used to guide the pooling strategy of clinical samples for a molecular test.
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公开(公告)号:US10475182B1
公开(公告)日:2019-11-12
申请号:US16268611
申请日:2019-02-06
Applicant: Qure.AI Technologies Private Limited
Inventor: Sasank Chilamkurhy , Rohit Ghosh , Swetha Tanamala , Pooja Rao , Prashant Warier
Abstract: This disclosure generally pertains to methods and systems for processing electronic data obtained from imaging or other diagnostic and evaluative medical procedures. Certain embodiments relate to methods for the development of deep learning algorithms that perform machine recognition of specific features and conditions in imaging and other medical data. Another embodiment provides systems configured to detect and localize medical abnormalities on medical imaging scans by a deep learning algorithm.
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公开(公告)号:US12148158B2
公开(公告)日:2024-11-19
申请号:US18371460
申请日:2023-09-22
Applicant: Qure.ai Technologies Private Limited
Inventor: Prashant Warier , Rohan Sahu , Ashish Mittal , Kautuk Trivedi , Preetham Putha , Manoj Tadepalli
Abstract: The present subject matter discloses a system and method for automatically detecting and quantifying a plaque/stenosis in a vascular ultrasound scan data in real time using Deep learning models. The system receives a video data and selects one or more frames/images for further processing to detect and quantify the plaque in the artery. Based on the selected one or more frames, the system detects a region of interest (ROI) and further processes the ROI. The system selects end points of a deposits of the plaque by taking a maximum length of the plaque in the artery/plaque boundary and determines the orientation of the vascular ultrasound scan. Based on the orientation and the selected end points, the system determines a vessel/artery boundary to identify a size of the plaque. Based on the determined vessel boundary and the orientation, the system determines plaque segments and measures parameters of the plaque.
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公开(公告)号:US11521321B1
公开(公告)日:2022-12-06
申请号:US17457465
申请日:2021-12-03
Applicant: Qure.ai Technologies Private Limited
Inventor: Prashant Warier , Ankit Modi , Preetham Putha , Prakash Vanapalli , Vikash Challa
IPC: G06T7/00 , G06T7/62 , G06T5/00 , G06T7/11 , G06V10/25 , G06V10/26 , G06V10/82 , G06V10/75 , A61B6/03 , A61B6/00 , G16H30/40 , G16H50/30 , G16H50/20 , G06T7/20 , G06T7/40
Abstract: Disclosed is a system and a method for monitoring a CT scan image. A CT scan image may be resampled into a plurality of slices using a bilinear interpolation. A region of interest may be identified on each slice using an image processing technique. The region of interest may be masked on each slice using deep learning. Subsequently, a nodule may be detected as the region of interest using the deep learning. Further, a plurality of characteristics associated with the nodule may be identified. Furthermore, an emphysema may be detected in the region of interest on each slice. A malignancy risk score for the patient may be computed. A progress of the nodule may be monitored across subsequent CT scan images. Finally, a report of the patient may be generated.
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公开(公告)号:US10733727B2
公开(公告)日:2020-08-04
申请号:US16268694
申请日:2019-02-06
Applicant: Qure.AI Technologies Private Limited
Inventor: Preetham Putha , Manoj Tadepalli , Bhargava Reddy , Tarun Nimmada , Pooja Rao , Prashant Warier
Abstract: This disclosure generally pertains to methods and systems for processing electronic data obtained from imaging or other diagnostic and evaluative medical procedures. Certain embodiments relate to methods for the development of deep learning algorithms that perform machine recognition of specific features and conditions in imaging and other medical data. Another embodiment provides systems configured to detect and localize medical abnormalities on medical imaging scans by a deep learning algorithm.
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公开(公告)号:US11861832B2
公开(公告)日:2024-01-02
申请号:US18073697
申请日:2022-12-02
Applicant: Qure.ai Technologies Private Limited
Inventor: Prashant Warier , Ankit Modi , Preetham Putha , Prakash Vanapalli , Vikash Challa , Ranjana Devi , Ritvik Jain
CPC classification number: G06T7/0012 , A61B6/50 , A61B6/5217 , A61B6/5258 , A61B6/5294 , G06T5/002 , G06T7/11 , G06V10/25 , G16H30/20 , G06T2207/10081 , G06T2207/20021 , G06T2207/20081 , G06T2207/30064 , G06T2207/30096
Abstract: Disclosed is a system and a method for determining a brock score. A CT scan image may be resampled into a plurality of slices using a bilinear interpolation. A nodule may be detected on one or more of the plurality of slices. A region of interest associated with the nodule may be identified using an image processing technique. Further, a nodule segmentation may be performed to remove an area surrounding the region of interest. Subsequently, a plurality of characteristics associated with the nodule may be identified automatically using a deep learning model. Finally, a brock score for the patient may be determined based on the plurality of characteristics and demographic data of the patient.
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公开(公告)号:US11276173B1
公开(公告)日:2022-03-15
申请号:US17383845
申请日:2021-07-23
Applicant: Qure.ai Technologies Private Limited
Inventor: Preetham Putha , Manoj Tadepalli , Bhargava Reddy , Tarun Raj , Ammar Jagirdar , Pooja Rao , Prashant Warier
IPC: G06T7/00 , A61B6/00 , G16H30/20 , G16H30/40 , G16H50/20 , G16H50/30 , G06N3/08 , G06T7/11 , G16H50/70 , G16H10/60 , G16H70/60
Abstract: A system and method for predicting a lung cancer risk based on a chest X-ray in which a nodule is detected in a chest of a patient based on an analysis of the chest X-ray using an image processing technique. A region of interest associated with the nodule is identified using the image processing technique. The region of interest is further analyzed using deep learning to determine a plurality of characteristics associated with the nodule. The plurality of characteristics comprises a size of the nodule, a calcification in the nodule, a homogeneity of the nodule and a spiculation of the nodule. Further, the plurality of characteristics is compared with a trained data model using deep learning. Based on the comparison, a risk score associated with the nodule is generated. Further, the lung cancer risk is predicted when the risk score exceeds a predefined threshold value.
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公开(公告)号:US11967079B1
公开(公告)日:2024-04-23
申请号:US18379194
申请日:2023-10-12
Applicant: Qure.ai Technologies Private Limited
Inventor: Shubham Kumar , Arjun Agarwal , Satish Kumar Golla , Swetha Tanamala , Preetham Putha , Sasank Chilamkurthy , Prashant Warier
IPC: G06T7/00 , G06T5/50 , G06T7/11 , G06V10/25 , G06V10/764
CPC classification number: G06T7/0012 , G06T5/50 , G06T7/11 , G06V10/25 , G06V10/764 , G06T2207/10081 , G06T2207/20084 , G06T2207/20221 , G06T2207/30016 , G06T2207/30101
Abstract: The present subject matter discloses a system and method for detecting Large Vessel Occlusion (LVO) on a Computational Tomography Angiogram (CTA) automatically. the system comprises a vascular-territory-segmentation module, an ICV segmentation module, MCA-LVO classifier and ICA-LVO classifier. The vascular territory segmentation module is configured to receive a set of CTA images and to mark a territory of vascular segments in the ICV region for each slice of the ROI. The ICV segmentation module is configured to process each slice of the ROI. The processed slices of the ROI are combined to develop a CTA image after application of MIP and the developed CTA image is segmented into a Middle Cerebral Artery (MCA) region and an Internal Cerebral Artery (ICA) region. The MCA-LVO and ICA-LVO classifiers determine presence of the LVO on the received MCA and ICA region using Deep Learning techniques and accordingly the presence of the LVO is reported.
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公开(公告)号:US20220245795A1
公开(公告)日:2022-08-04
申请号:US17207598
申请日:2021-03-19
Applicant: Qure.ai Technologies Private Limited
Inventor: Preetham Putha , Manoj Tadepalli , Bhargava Reddy , Tarun Raj , Ammar Jagirdar , Pooja Rao , Prashant Warier
Abstract: This disclosure generally pertains to methods and systems for automatically detecting acquisition errors in a medical image using machine learning. Certain embodiments relate to methods for the development of deep learning algorithms that perform machine recognition of specific features and conditions in imaging and other medical data. Another embodiment provides systems for detecting acquisition errors in an X-ray image, the system comprising a non-transitory computer-readable medium storing a preprocessing quality control module that, when executed by at least one electronic processor, is configured to generate associated classifications identifying characteristics of the medical image.
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公开(公告)号:US11367191B1
公开(公告)日:2022-06-21
申请号:US17457470
申请日:2021-12-03
Applicant: Qure.ai Technologies Private Limited
Inventor: Prashant Warier , Ankit Modi , Preetham Putha , Prakash Vanapalli , Pradeep Kumar Thummala , Vijay Senapathi , Kunjesh Kumar
IPC: G06T7/00 , G16H30/40 , G16H15/00 , G06V10/25 , G06V10/764
Abstract: Disclosed is a system and a method for adapting a report of nodules in computed tomography (CT) scan image. A CT scan image may be resampled into a plurality of slices. A plurality of region of interests may be identified on each slice using an image processing technique. Subsequently, a plurality of nodules may be detected in each region of interest using the deep learning. Further, a plurality of characteristics associated with each nodule may be identified. The plurality of nodules may be classified into AI-confirmed nodules and AI-probable nodules based on a malignancy score. Further, feedback associated with the AI-confirmed nodules and the AI-probable may be received form a radiologist. Furthermore, data may be adapted based on the feedback. Finally, a report comprising adapted data may be generated.
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