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Development of HepatIA: A computed tomography annotation platform and database for artificial intelligence training in hepatocellular carcinoma detection at a Brazilian tertiary teaching hospital
Bruno Aragão Rochaa,b,
Corresponding author
brunoaragao92@gmail.com

Corresponding author.
, Lorena Carneiro Ferreiraa, Luis Gustavo Rocha Viannaa,b, Ana Claudia Martins Ciconellea,b, João Martins Cortez Filhoa, Lucas Salume Lima Nogueiraa, Maurício Ricardo Moreira da Silva Filhoa, Claudia da Costa Leitea, Cesar Higar Nomuraa, Giovanni Guido Cerria, Flair José Carrilhoc, Suzane Kioko Onoc
a Instituto de Radiologia (InRad) da Universidade de São Paulo (USP), São Paulo, SP, Brasil
b Machiron, Guarulhos, SP, Brasil
c Departamento de Gastroenterologia, Universidade de São Paulo (USP), São Paulo, SP, Brasil
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    "textoCompleto" => "<span class="elsevierStyleSections"><span id="sec0001" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0009">Introduction</span><p id="para0009" class="elsevierStylePara elsevierViewall">Hepatocellular Carcinoma &#40;HCC&#41; is an epithelial tumor comprised of cells resembling normal hepatocytes&#46; In 2015&#44; it was the fifth most common tumor worldwide&#46; However&#44; due to increasing incidence&#44; especially in Western nations&#44; HCC has become the fourth leading cause of cancer-related deaths&#46;<a class="elsevierStyleCrossRef" href="#bib0001"><span class="elsevierStyleSup">1</span></a><span class="elsevierStyleSup">&#44;</span><a class="elsevierStyleCrossRef" href="#bib0002"><span class="elsevierStyleSup">2</span></a></p><p id="para0010" class="elsevierStylePara elsevierViewall">The prognosis of HCC primarily depends on the stage at which the tumor is detected&#46; Due to late symptom presentation&#44; patients typically have a shorter survival rate&#46;<a class="elsevierStyleCrossRef" href="#bib0001"><span class="elsevierStyleSup">1</span></a> In Brazil&#44; data from the Sistema &#218;nico de Sa&#250;de &#40;SUS&#41; indicate that approximately 62&#37; of HCC patients were diagnosed when only palliative measures were viable&#46;<a class="elsevierStyleCrossRef" href="#bib0003"><span class="elsevierStyleSup">3</span></a></p><p id="para0011" class="elsevierStylePara elsevierViewall">The American Association for the Study of Liver Diseases &#40;AASLD&#41; recommends ultrasonography &#40;US&#41; for HCC surveillance in patients with liver disease&#46;<a class="elsevierStyleCrossRef" href="#bib0002"><span class="elsevierStyleSup">2</span></a><span class="elsevierStyleSup">&#44;</span><a class="elsevierStyleCrossRef" href="#bib0004"><span class="elsevierStyleSup">4</span></a><span class="elsevierStyleSup">&#44;</span><a class="elsevierStyleCrossRef" href="#bib0005"><span class="elsevierStyleSup">5</span></a> Additionally&#44; serum Alpha-Fetoprotein &#40;AFP&#41; detection can be used alongside the US&#44; enhancing sensitivity from 92&#37; to 99&#46;2&#37;&#46;<a class="elsevierStyleCrossRef" href="#bib0006"><span class="elsevierStyleSup">6</span></a> Traditional diagnostic methods based on cytology and histology have been surpassed by techniques such as Magnetic Resonance Imaging &#40;MRI&#41; and multiphase Computed Tomography &#40;CT&#41;&#46; These advanced imaging methods&#44; involving intravenous contrast injection with four-phase image acquisition &#40;non-enhanced&#44; arterial phase&#44; portal phase&#44; and equilibrium phase&#41;&#44; are considered the gold standard for HCC detection&#44; obviating the need for a biopsy if typical imaging patterns are present&#46;<a class="elsevierStyleCrossRef" href="#bib0002"><span class="elsevierStyleSup">2</span></a><span class="elsevierStyleSup">&#44;</span><a class="elsevierStyleCrossRef" href="#bib0004"><span class="elsevierStyleSup">4</span></a><span class="elsevierStyleSup">&#44;</span><a class="elsevierStyleCrossRef" href="#bib0005"><span class="elsevierStyleSup">5</span></a></p><p id="para0012" class="elsevierStylePara elsevierViewall">Recent advances in diagnostic medicine include the development of tools based on Artificial Intelligence &#40;AI&#41; algorithms&#44; notably convolutional neural networks&#44; which are highly suitable for imaging analysis&#46; These AI approaches can extract imaging patterns by learning from data and mastering complex tasks&#44; showing great potential for diagnostic methods and patient management systems&#46;<a class="elsevierStyleCrossRef" href="#bib0007"><span class="elsevierStyleSup">7</span></a> For example&#44; AI algorithms have achieved high accuracy in identifying pneumonia in chest X-rays and melanoma or onychomycosis in medical images&#46;<a class="elsevierStyleCrossRefs" href="#bib0008"><span class="elsevierStyleSup">8-10</span></a></p><p id="para0013" class="elsevierStylePara elsevierViewall">Most current diagnostic algorithms are supervised learning algorithms&#44; requiring large amounts of annotated data for training&#46; In abdominal CT applications&#44; these annotations may include liver segmentation Regions of Interest &#40;ROI&#41;&#44; lesion segmentation ROI&#44; or risk classification for specific pathologies&#46; However&#44; there is a scarcity of publicly available liver image datasets with comprehensive ground truth&#44; including four-phase CT scans and clinical information&#46;<a class="elsevierStyleCrossRef" href="#bib0011"><span class="elsevierStyleSup">11</span></a><a class="elsevierStyleCrossRef" href="#tbl0001">Table 1</a> compares the available datasets&#46;<a class="elsevierStyleCrossRefs" href="#bib0011"><span class="elsevierStyleSup">11-13</span></a></p><elsevierMultimedia ident="tbl0001"></elsevierMultimedia><p id="para0014" class="elsevierStylePara elsevierViewall">The Liver Tumor Segmentation Challenge &#40;LiTS&#41;&#44; organized by the International Symposium on Biomedical Imaging &#40;ISBI&#41; and International Conference on Medical Imaging and Computer-Assisted Intervention &#40;MICCAI&#41; in 2017&#44; represents the state-of-the-art in liver lesion analysis&#46;<a class="elsevierStyleCrossRef" href="#bib0011"><span class="elsevierStyleSup">11</span></a><span class="elsevierStyleSup">&#44;</span><a class="elsevierStyleCrossRef" href="#bib0014"><span class="elsevierStyleSup">14</span></a> It provided a database of 200 abdominal CT scans to facilitate algorithm development for liver and lesion identification&#46; However&#44; despite being the most complete dataset available&#44; it lacks information on four-phase CT scans or detailed liver pathology information&#46;</p><p id="para0015" class="elsevierStylePara elsevierViewall">Given the challenges in liver segmentation&#44; lesion detection&#44; and HCC diagnosis&#44; and the success of AI algorithms in liver imaging demonstrated by LiTS&#44;<a class="elsevierStyleCrossRef" href="#bib0011"><span class="elsevierStyleSup">11</span></a> the authors initiated this study&#46; The multidisciplinary team&#44; consisting of clinical physicians&#44; radiologists&#44; and machine learning and data science experts&#44; aimed to create an annotation platform and a comprehensive database of patient baseline characteristics and abdominal CT exams&#46; This initiative seeks to facilitate the development of deep-learning algorithms to assist radiologists in detecting liver diseases&#46;</p><p id="para0016" class="elsevierStylePara elsevierViewall">This descriptive article addresses the need for detailed documentation of tools&#44; data organization&#44; and database structuring in AI healthcare research&#46; By providing a thorough account of these processes&#44; the authors aim to support and inspire other research groups to enhance their AI capabilities for medical imaging&#46;</p></span><span id="sec0002" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0010">Materials and methods</span><p id="para0017" class="elsevierStylePara elsevierViewall">This investigation adhered to the ethical guidelines of the 1975 Declaration of Helsinki and was approved by the institutional Internal Review Board under protocol 69385217&#46;1&#46;0000&#46;0068&#46; Conducted in collaboration with the Hospital das Cl&#237;nicas da Faculdade de Medicina da Universidade de S&#227;o Paulo &#40;HCFMUSP&#41;&#44; S&#227;o Paulo&#44; Brazil&#44; the authors gathered baseline characteristics and CT scans of 656 patients consulted and examined at the hospital from 2008 to 2021&#46; Baseline information included sex&#44; age&#44; date of birth&#44; disease history&#44; and previous diagnoses&#46; The current database comprises 692 CT volumes obtained from a four-phase protocol&#44; including scans from healthy patients and those with liver disease&#44; such as HCC&#44; cirrhosis&#44; and other conditions&#46;</p><span id="sec0003" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0011">Database design</span><p id="para0018" class="elsevierStylePara elsevierViewall">The medical and technology teams designed the database to support research in radiology and liver pathology&#46; Implemented using PostgreSQL&#44; a free and open-source Relational Database Management System &#40;RDBMS&#41;&#44;<a class="elsevierStyleCrossRef" href="#bib0015"><span class="elsevierStyleSup">15</span></a> the database entity relationship diagram is shown in <a class="elsevierStyleCrossRef" href="#fig0001">Fig&#46; 1</a>&#46; The process of populating HepatIA&#39;s database with DICOM files of abdominal CTs and corresponding liver and tumor masks involves multiple steps&#46; Initially&#44; exams are selected based on radiology report findings&#44; such as &#8220;normal exams&#8221;&#44; &#8220;exams containing LI-RADS 5&#8221;&#44; and &#8220;exams with signs of chronic liver disease without focal lesions&#8221;&#46; This selection process was facilitated by an in-house software called Radex&#44; which enables advanced textual searches in radiological reports&#46; Selected exams are then exported from the institution&#39;s PACS to a research DICOM server &#40;Orthanc v&#46; 1&#46;5&#46;8&#41; within the institution&#39;s network&#46; The institutional data team&#44; Inlab&#44; coordinates the export process&#44; maintaining governance over data access&#46; The anonymization process is performed automatically on the DICOM Orthanc server&#46; Radiologists access the exams through the HepatIA interface&#44; registering each new exam and including structured descriptions of findings in the database&#46; <a class="elsevierStyleCrossRef" href="#fig0002">Fig&#46; 2</a> shows the HepatIA database conceptual architecture diagram&#46;</p><elsevierMultimedia ident="fig0001"></elsevierMultimedia><elsevierMultimedia ident="fig0002"></elsevierMultimedia><p id="para0019" class="elsevierStylePara elsevierViewall">For database implementation&#44; the authors used Django &#40;v&#46; 3&#46;2&#46;9&#41;&#44; a Python web framework&#44; chosen for its high-level structure&#44; quick development facilitation&#44; and practical design&#46; Django supports various formats&#44; including HTML for page visualization and JSON for data manipulation&#46; It is based on the concept of a Rest API&#44; allowing data consumption from different sources&#44; such as Orthanc and the website database&#46; PostgreSQL was chosen as the RDBMS for its compatibility with Django and UTF-8 encoding&#46; For the HepatIA front-end implementation&#44; the authors used Vue&#46;js &#40;v&#46; 2&#46;6&#46;11&#41;&#44; an open-source JavaScript framework known for its performance and versatility in building web user interfaces&#46; Vue&#46;js enhances component organization&#44; structure&#44; style&#44; and reactivity&#46;</p></span><span id="sec0004" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0012">Exam annotation</span><p id="para0020" class="elsevierStylePara elsevierViewall">Exam annotation involved compiling relevant findings&#44; including liver volume and morphology&#44; parenchyma characteristics&#44; caudate lateral segment hypertrophy&#44; ascites presence&#44; portal vein diameter&#44; splenomegaly presence&#44; portal thrombosis presence&#44; cavernous transformation presence&#44; and nodule count&#46; Nodules were described according to their respective LI-RADS category and location&#46; Annotation was based on the original radiological report of each exam&#44; with discrepancies resolved by consensus within the annotation team&#46; The annotation team included one radiologist with 11-years of experience&#44; one with 4-years of experience&#44; a 2<span class="elsevierStyleSup">nd</span> year radiology resident&#44; and two medical students&#46; LI-RADS 3 to 5 exams were annotated by radiologists and residents&#44; while LI-RADS 1 and 2 exams and healthy patients were annotated by students and reviewed by radiologists&#46;</p><p id="para0021" class="elsevierStylePara elsevierViewall">The annotation interface consists of four tabs&#58; Patient&#44; Exam&#44; Report&#44; and Nodules&#44; as shown in <a class="elsevierStyleCrossRef" href="#fig0003">Fig&#46; 3</a>&#46; Each tab contains fields corresponding to the attributes shown in <a class="elsevierStyleCrossRef" href="#fig0001">Fig&#46; 1</a>&#46; For segmentation&#44; the original DICOM files of each exam were displayed in a web browser using the OHIF medical image viewer&#46; Segmentation of regions of interest was performed via OHIF&#44; with segmentations saved directly on the platform&#46; OHIF supports the MONAI Label plugin&#44; enabling the use of pre-annotation segmentation models&#44; which streamlined liver mask annotations&#46; <a class="elsevierStyleCrossRef" href="#fig0004">Fig&#46; 4</a>&#46; shows the OHIF web browser segmentation interface&#46;</p><elsevierMultimedia ident="fig0003"></elsevierMultimedia><elsevierMultimedia ident="fig0004"></elsevierMultimedia><p id="para0022" class="elsevierStylePara elsevierViewall">In segmentation masks&#44; different weights were assigned to areas corresponding to the liver and nodules&#46; Liver areas were assigned a weight of 1&#44; liver nodule areas a weight of 2&#44; and the rest of the exam a weight of 0&#46; The result was a three-dimensional space &#40;liver mask or nodule mask&#41; with specific attenuations &#40;0&#44; 1 and 2&#41; matching the dimensions of the original exam&#46; The mask file was then compared to the original exam &#40;multiple attenuations ranging from -1000 to &#43;1000 Hounsfield units&#41; to identify and compare both liver and nodule locations&#46; Segmentation masks were stored in Nifti &#40;&#46;nii&#41; format&#46;</p></span></span><span id="sec0005" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0013">Results</span><span id="sec0006" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0014">Dashboard</span><p id="para0023" class="elsevierStylePara elsevierViewall">The HepatIA database&#39;s website includes a dashboard&#44; shown in <a class="elsevierStyleCrossRef" href="#fig0005">Fig&#46; 5</a>&#46; It compiles information from all database cases into intuitive plots and histograms&#44; demonstrating the prevalence of various parameters in the sample&#46; This visual aid helps users better understand the population profiles and patterns included in the database&#46;</p><elsevierMultimedia ident="fig0005"></elsevierMultimedia><p id="para0024" class="elsevierStylePara elsevierViewall">Radiologists can perform searches using filters such as cirrhosis presence&#44; nodule count&#44; and LI-RADS classification&#46;</p></span><span id="sec0007" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0015">Database profile</span><p id="para0025" class="elsevierStylePara elsevierViewall">The database includes exams selected based on the present study interests&#46; New exams are continually added&#44; allowing for ongoing research development&#46; At the time of writing&#44; the HepatIA database includes data from 656 patients and 692 exams&#44; as some patients have multiple CT scans&#46; The database includes 425 &#40;64&#37;&#41; male patients and 231 &#40;35&#37;&#41; females&#44; with an average age of 56&#46;89&#177;13&#46;96 years&#46; Patients were classified based on baseline diagnosis&#44; with the distribution shown in <a class="elsevierStyleCrossRef" href="#fig0006">Fig&#46; 6A</a>&#46; The main baseline diagnoses regarding liver condition were healthy &#40;no known chronic liver disease&#41;&#44; hepatitis B&#44; hepatitis C&#44; Metabolic-Associated Fatty Liver Disease &#40;MAFLD&#41;&#44; chronic alcohol consumption &#40;OH&#41;&#44; and other chronic liver diseases&#46; Patient disease characteristics are described in <a class="elsevierStyleCrossRef" href="#fig0006">Fig&#46; 6B</a>&#44; including healthy&#44; chronic liver disease with morphological alterations without focal lesions&#44; LI-RADS low grade &#40;1 or 2&#41;&#44; LI-RADS high grade &#40;3&#44; 4 or 5&#41;&#44; treated HCC&#44; and metastasis&#46; The original CT scans are stored in DICOM format without treatment&#44; including all four phases&#46;</p><elsevierMultimedia ident="fig0006"></elsevierMultimedia></span></span><span id="sec0008" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0016">Discussion</span><p id="para0026" class="elsevierStylePara elsevierViewall">This study demonstrates the construction of a comprehensive database of radiological exams to support the development of AI algorithms in a teaching hospital&#46; A major bottleneck in developing robust AI solutions for medical imaging is not only data availability but also the ability to organize data in a structured and curated manner for use by data scientists and engineers&#46;</p><p id="para0027" class="elsevierStylePara elsevierViewall">Key strengths of this database design include the inclusion of baseline clinical information and qualitative image data&#44; such as liver morphology&#46; Furthermore&#44; in segmentation tasks&#44; binary masks for all four exam phases were consistently included&#44; a feature not commonly found in other databases&#46; This approach allows for phase comparison&#44; which is crucial in diagnosing HCC&#46;</p><p id="para0028" class="elsevierStylePara elsevierViewall">For exam inclusion in the database&#44; information from the original radiological report was used as a reference&#44; facilitated by a dedicated text-mining tool for radiological reports&#46; In the studied institution&#44; radiological reports undergo double reading&#44; ensuring greater reliability of radiological findings&#46; An integrated structure within the hospital&#39;s information and data governance systems was established&#44; with all infrastructure hosted locally to maintain data security&#46;</p><p id="para0029" class="elsevierStylePara elsevierViewall">The integration of OHIF with MONAI Label offers a comprehensive platform for medical image visualization and annotation&#44; optimizing the analysis and diagnostic process&#46;<a class="elsevierStyleCrossRef" href="#bib0016"><span class="elsevierStyleSup">16</span></a> This integration enhances annotators&#39; efficiency&#44; allowing radiologists to focus on analyzing and interpreting medical images&#46;</p><p id="para0030" class="elsevierStylePara elsevierViewall">Although initially focused on collecting data to train algorithms for HCC detection&#44; this database is designed for continuous data collection&#44; expanding its scope to other liver lesions and potentially adapting to other organ diseases and radiological exams&#46;</p></span><span id="sec0009" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0017">Conclusion</span><p id="para0031" class="elsevierStylePara elsevierViewall">A comprehensive data structure was successfully created and integrated with the Information Technology &#40;IT&#41; systems of a Brazilian tertiary teaching hospital&#44; enabling research on deep learning algorithms applied to abdominal CT scans for investigating hepatic lesions&#44; such as hepatocellular carcinoma&#46;</p></span><span id="sec0010" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0018">Authors&#8217; contributions</span><p id="para0032" class="elsevierStylePara elsevierViewall">The study was conceived and led by B&#46;A&#46;R&#46;&#44; who also wrote the manuscript&#46; L&#46;C&#46;F&#46;&#44; L&#46;S&#46;L&#46;N&#46;&#44; J&#46;M&#46;C&#46;F&#46;&#44; and M&#46;R&#46;M&#46;S&#46;F&#46; were responsible for data curation&#46; L&#46;G&#46;R&#46;V&#46; served as the project manager&#44; developed the methodology&#44; and A&#46;C&#46;M&#46;C&#46; conducted the data analysis&#46; C&#46;C&#46;L&#46;&#44; C&#46;H&#46;N&#46;&#44; G&#46;G&#46;C&#46;&#44; and F&#46;J&#46;C&#46; provided supervision&#44; and facilitated the partnership between the Faculty of Medicine at the University of S&#227;o Paulo&#44; the Hospital das Cl&#237;nicas of S&#227;o Paulo&#44; and MaChiron&#46; S&#46;K&#46;O&#46; served as an advisor&#44; contributing to the conception&#44; manuscript review&#44; and funding acquisition&#46;</p></span><span id="sec0011" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0019">Funding</span><p id="para0033" class="elsevierStylePara elsevierViewall">The authors thank the <span class="elsevierStyleGrantSponsor" id="gs0001">S&#227;o Paulo Research Foundation &#40;FAPESP&#41;</span> for financial support under the Grant <span class="elsevierStyleGrantNumber" refid="gs0001">2019&#47;05723-7</span> and for the scholarships <span class="elsevierStyleGrantNumber" refid="gs0001">2020&#47;00037-5</span> and <span class="elsevierStyleGrantNumber" refid="gs0001">2020&#47;07411-0</span>&#46; The authors thank the Brazilian Council for Development of Science and Technology &#40;CNPq&#41; for the scholarships 136884&#47;2020-2 and 118670&#47;2019-0&#46; S&#46;K&#46;O&#46; would also like to thank CNPq for Grant PQ 304409&#47;2021-9&#46; The opinions&#44; hypotheses&#44; conclusions&#44; or recommendations expressed in this material are solely the responsibility of the authors and do not necessarily reflect FAPESP&#39;s or CNPq&#39;s view&#46;</p></span></span>"
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      "resumen" => "<span id="abss0001" class="elsevierStyleSection elsevierViewall"><p id="spara008" class="elsevierStyleSimplePara elsevierViewall"><ul class="elsevierStyleList" id="celist0001"><li class="elsevierStyleListItem" id="celistitem0001"><span class="elsevierStyleLabel">&#8226;</span><p id="para0001" class="elsevierStylePara elsevierViewall">The scarcity of publicly available computed tomography datasets with clinical details and four-phase segmentation masks hinders artificial intelligence research in hepatocellular carcinoma&#46;</p></li><li class="elsevierStyleListItem" id="celistitem0002"><span class="elsevierStyleLabel">&#8226;</span><p id="para0002" class="elsevierStylePara elsevierViewall">Developing an annotation platform in a teaching hospital necessitates integrating diverse technological tools and performing complex system integrations&#46;</p></li><li class="elsevierStyleListItem" id="celistitem0003"><span class="elsevierStyleLabel">&#8226;</span><p id="para0003" class="elsevierStylePara elsevierViewall">Successfully integrating an annotation platform and database for hepatocellular carcinoma can significantly enhance deep-learning research in this area&#46;</p></li></ul></p></span>"
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        "resumen" => "<span id="abss0002" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0003">Background</span><p id="spara009" class="elsevierStyleSimplePara elsevierViewall">Hepatocellular carcinoma &#40;HCC&#41; is a prevalent tumor with high mortality rates&#46; Computed tomography &#40;CT&#41; is crucial in the non-invasive diagnosis of HCC&#46; Recent advancements in artificial intelligence &#40;AI&#41; have shown significant potential in medical imaging analysis&#46; However&#44; developing these AI algorithms is hindered by the scarcity of comprehensive&#44; publicly available liver imaging datasets&#46;</p></span> <span id="abss0003" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0004">Objectives</span><p id="spara010" class="elsevierStyleSimplePara elsevierViewall">This study aims to detail the tools&#44; data organization&#44; and database structuring used in creating HepatIA&#44; a medical imaging annotation platform and database at a Brazilian tertiary teaching hospital&#46; HepatIA supports liver disease AI research at the institution&#46;</p></span> <span id="abss0004" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0005">Material and methods</span><p id="spara011" class="elsevierStyleSimplePara elsevierViewall">The authors collected baseline characteristics and CT scans of 656 patients from 2008 to 2021&#46; The database&#44; designed using PostgreSQL and implemented with Django and Vue&#46;js&#44; includes 692 CT volumes from a four-phase abdominal CT protocol&#46; Radiologists made segmentation annotations using the OHIF medical image viewer&#44; incorporating MONAI Label for pre-annotation segmentation models&#46; The annotation process included detailed descriptions of liver morphology and nodule characteristics&#46;</p></span> <span id="abss0005" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0006">Results</span><p id="spara012" class="elsevierStyleSimplePara elsevierViewall">The HepatIA database currently includes healthy individuals and those with liver diseases such as HCC and cirrhosis&#46; The database dashboard facilitates user interaction with intuitive plots and histograms&#46; Key patient demographics include 64&#37; males and an average age of 56&#46;89 years&#46; The database supports various filters for detailed searches&#44; enhancing research capabilities&#46;</p></span> <span id="abss0006" class="elsevierStyleSection elsevierViewall"><span class="elsevierStyleSectionTitle" id="cesectitle0007">Conclusion</span><p id="spara013" class="elsevierStyleSimplePara elsevierViewall">A comprehensive data structure was successfully created and integrated with the IT systems of a teaching hospital&#44; enabling research on deep learning algorithms applied to abdominal CT scans for investigating hepatic lesions such as HCC&#46;</p></span>"
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                            1 => "S Alle"
                            2 => "V Nath"
                            3 => "Y Tang"
                            4 => "A Ihsani"
                            5 => "M Asad"
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                        "tituloSerie" => "Med Image Anal"
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                        "volumen" => "95"
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Article information
ISSN: 18075932
Original language: English
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