SABCS 2024: New Research Assesses ICAD's Image Based AI-Risk, Detection, and Breast Arterial Calcifications (BAC) Assessment Across Diverse Populations
SABCS 2024: New Research Assesses ICAD's Image Based AI-Risk, Detection, and Breast Arterial Calcifications (BAC) Assessment Across Diverse Populations
Reveals Higher Prevalence of Breast Arterial Calcifications (BAC) in Breast Cancer Patients, Suggesting Potential Need for Cardiovascular Assessment Alongside Oncological Treatment
显示乳腺癌患者中乳腺动脉钙化(BAC)的发生率较高,这表明在肿瘤治疗的同时可能需要进行心血管评估
NASHUA, N.H., Dec. 11, 2024 (GLOBE NEWSWIRE) -- iCAD, Inc. (NASDAQ: ICAD) ("iCAD" or the "Company") a global leader in clinically proven AI-powered cancer detection solutions, announced today that four novel AI-driven breast cancer research abstracts have been accepted for presentation at the 2024 San Antonio Breast Cancer Symposium (SABCS), taking place from December 10-13, 2024. These clinical abstracts highlight the latest research in breast health AI, focusing on improving detection and risk prediction accuracy and assessing disparities across diverse populations.
新罕布什尔州纳舒亚,2024年12月11日(环球新闻稿)-- iCAD公司(纳斯达克:ICAD)("iCAD"或"公司")是全球领先的临床验证的人工智能驱动的癌症检测解决方案供应商,今天宣布,四篇新的人工智能驱动的乳腺癌研究摘要已被接受在2024年圣安东尼奥乳腺癌研讨会(SABCS)上进行展示,该研讨会将于2024年12月10日至13日举行。这些临床摘要重点介绍了乳腺健康人工智能的最新研究,着重提高检测和风险预测的准确性,并评估不同群体之间的差异。
Presenting Author Chirag R. Parghi, MD, MBA, Chief Medical Officer at Solis Mammography, will showcase three research abstracts during Poster Session 2, scheduled for Wednesday, December 11, 2024, from 5:30 to 7:00 p.m. CST. Additional contributing authors include Jennifer Pantleo, R.N., BSN; Julie Shisler, BS; Jeff Hoffmeister, M.D., MSEE; Zi Zhang, M.D., M.P.H; Avi Sharma, M.D.; and, Wei Zhang, PhD.
展示作者Chirag R. Parghi,医学博士,工商管理硕士,Solis Mammography首席医疗官,将在2024年12月11日星期三的海报会议2中展示三篇研究摘要,时间为下午5:30至下午7:00(CST)。其他贡献作者包括Jennifer Pantleo,注册护士,护理学学士;Julie Shisler,理学学士;Jeff Hoffmeister,医学博士,电子学硕士;Zi Zhang,医学博士,公共卫生硕士;Avi Sharma,医学博士;以及Wei Zhang,博士。
Additionally, presenting Author Mikael Eriksson, PhD, epidemiologist at Karolinska Institute, Sweden, will present research during general session 2, scheduled for Thursday, December 12, 2024 from 9:00 a.m. to 12:30 p.m. CST. demonstrating a 10-year image-derived AI-risk model, based on iCAD's ProFound Risk solution, for primary prevention of breast cancer showed higher discriminatory performance than the clinical Tyrer-Cuzick v8 risk model.
此外,展示作者Mikael Eriksson,医学博士,瑞典卡罗林斯卡学院流行病学家,将在2024年12月12日星期四的大会会议2中展示研究,时间为上午9:00至下午12:30(CST)。研究显示基于iCAD的ProFound Risk解决方案的十年影像衍生人工智能风险模型,在全乳腺癌的初级预防中展示了比临床Tyrer-Cuzick v8风险模型更高的辨别性能。
Advancing Breast Health with AI
利用人工智能推动乳腺健康
"These studies exemplify the critical role the ProFound AI Breast Health Suite can play in not only improving early breast cancer detection and risk prediction but also in addressing health disparities in diverse populations," said Dana Brown, President and CEO of iCAD. "We are proud to collaborate with Solis Mammography and Karolinska Institute contributing to groundbreaking research that can elevate the standard of care in breast health worldwide. These partnerships demonstrate the potential of our technology to improve patient outcomes, and also opens pathways to broader adoption of AI in healthcare, driving growth in key markets."
“这些研究展示了ProFound人工智能乳腺健康套件在提高早期乳腺癌检测和风险预测方面的重要作用,同时也为不同人群解决健康差距,”iCAD的总裁兼首席执行官达纳·布朗表示。“我们很自豪能与Solis Mammography和卡罗林斯卡学院合作,推动能够提升全球乳腺健康护理标准的开创性研究。这些合作关系展示了我们的科技改善患者结果的潜力,同时也为人工智能在医疗领域的更广泛应用打开了道路,为关键市场的增长驱动。”
Dr. Chirag Parghi, Chief Medical Officer at Solis Mammography, added: "These findings underscore the transformative potential of AI in empowering clinicians to improve outcomes regardless of age, race or breast density. By addressing traditional gaps in breast cancer detection and risk assessment, AI has the potential to exponentially improve current and future state breast cancer detection."
Solis Mammography的首席医疗官Chirag Parghi博士补充道:“这些发现强调了人工智能在赋能临床医生改善结果方面的变革潜力,无论年龄、种族或乳腺密度如何。通过解决乳腺癌检测和风险评估中的传统差距,人工智能有潜力在当前和未来的乳腺癌检测中实现指数级改善。”
Poster Details:
海报详情:
P2-06-20: Use of an AI Algorithm to Determine the Prevalence of Breast Arterial Calcifications in Women Undergoing Screening Mammograms Based on Race, Age, and Cancer Status (SESS-2141)
P2-06-20:使用人工智能算法来判断女性在接受筛查乳腺X光检查时乳腺动脉钙化的流行率,依据种族、年龄和癌症状态(SESS-2141)
This poster explores the potential of an AI algorithm to identify Breast Arterial Calcifications (BAC), which are calcium deposits in the arteries of the breast that are commonly detected during routine mammograms. The study demonstrates that the weighted prevalence and distribution of BAC increases with age, as expected in a screening population. Interestingly, BAC prevalence did not vary by race, suggesting that it could serve as an effective cardiovascular biomarker across racial groups. Furthermore, the AI-based BAC detection algorithm highlighted a higher prevalence of BAC in women with mammographically detected breast cancer, suggesting women with increased BAC and breast cancer may benefit from cardiovascular assessment in addition to their oncological treatment. In that sense, a conventional mammogram could identify the cardiac needs of patients prior to or at the time of breast cancer diagnosis, providing an opportunity for early cardiovascular intervention.
这张海报探讨了一种人工智能算法识别乳腺动脉钙化(BAC)的潜力,BAC是乳腺动脉中的钙沉积,通常在常规乳腺X光检查中发现。研究表明,BAC的加权流行率和分布随着年龄的增长而增加,这在筛查人群中是预期的。有趣的是,BAC的流行率在不同种族间并没有差异,这表明它可能作为所有种族群体中有效的心血管生物标志物。此外,基于人工智能的BAC检测算法在乳腺癌患者中显示出更高的BAC流行率,这表明在乳腺癌患者中,增加的BAC和乳腺癌可能在其肿瘤治疗的基础上受益于心血管评估。从这个意义上说,常规的乳腺X光检查可以在乳腺癌诊断前或诊断时识别患者的心脏需求,为早期心血管干预提供机会。
P2-06-24: Effect of an Image-Derived Short-Term Breast Cancer Risk Score in the Analysis of Breast Cancer Prevalence in Screening Populations by Race and Breast Density (SESS-2148)
P2-06-24:基于图像衍生的短期乳腺癌风险评分对按种族和乳腺密度筛查人群乳腺癌流行率分析的影响(SESS-2148)
This study delves into the development and validation of an AI-driven short-term breast cancer risk assessment score based on image-derived features, including mammographic density, and age. AI-generated case scores were shown to effectively stratify mammograms into categories with varying frequencies of cancer. The case scores did not vary significantly across racial subgroups in our dataset, suggesting that the accuracy of the AI software was consistent across races. The study concludes that an image-derived AI risk model is equally effective across race and density, providing accurate insight into short-term breast cancer risk. Based on the results, image-based risk scoring could offset known gaps in breast cancer detection by traditional mammography in patients with dense breast tissue and help address existing disparities across races. Findings from this study highlight the potential of AI to offer more consistent and equitable breast cancer risk assessments, improving both diagnostic accuracy and patient outcomes across diverse populations.
本研究深入探讨了一种基于图像特征(包括乳腺密度和年龄)开发和验证的人工智能驱动的短期乳腺癌风险评估评分。研究显示,人工智能生成的病例评分可以有效地将乳腺X光筛查分类为具有不同癌症频率的类别。我们的数据集中,病例评分在不同种族亚组间没有显著差异,这表明人工智能软件的准确性在各种族间是一致的。研究得出结论,基于图像的人工智能风险模型在种族和密度方面同样有效,提供了有关短期乳腺癌风险的准确见解。根据结果,基于图像的风险评分可以弥补传统乳腺X光在密集乳腺组织患者中的乳腺癌检测已知的差距,并帮助解决不同种族之间现有的差异。本研究的发现突显了人工智能在提供更一致和公平的乳腺癌风险评估方面的潜力,提高了不同人群的诊断准确性和患者结果。
P2-06-25: Is Mammography Artificial Intelligence Consistent Across Race and Density? (SESS-2135)
P2-06-25:乳腺摄影的人工智能在不同种族和乳腺密度中是否一致?(SESS-2135)
This research focuses on the consistency of AI-based mammographic case scoring across different racial and breast density groups. The study emphasizes the potential of AI to provide equitable and reliable screening results, regardless of the patient's race or breast tissue density, two factors known to impact traditional mammography outcomes. For women with non-dense or fatty breast tissue, a low case score corresponded to a significantly lower frequency of cancer (1 in 11,363) compared to women with dense breast tissue who had a low case score (1 in 1,952). Although this finding was not statistically significant according to the Mann-Whitney U test, the difference between categories is notable, and the lack of statistical confirmation is likely due to the low absolute number of cancer cases in the low case score, non-dense cohort. Therefore, the negative predictive value of a low case score on a screening mammogram is presumably higher in women with non-dense breast tissue across a large dataset, suggesting a more reliable assessment for this group.
本研究重点研究基于人工智能的乳腺摄影病例评分在不同种族和乳腺密度组之间的一致性。研究强调人工智能提供公平、可靠的筛查结果的潜力,无论患者的种族或乳腺组织密度如何,这两个因素已知对传统乳腺摄影结果有影响。对于乳腺组织不密集或脂肪型的女性,低病例评分对应的癌症发生频率明显较低(1/11,363),而密集乳腺组织的女性则为(1/1,952)。尽管根据Mann-Whitney U检验,该发现并没有统计学显著性,但不同类别之间的差异显著,缺乏统计确认的原因可能是低病例评分中不密集组的癌症病例绝对数较低。因此,基于筛查乳腺摄影的低病例评分对乳腺组织不密集的女性的负预测值在大数据集中被推测为更高,表明对该群体的评估更为可靠。
GS2-10: A long-term image-derived AI risk model for primary prevention of breast cancer
GS2-10:用于乳腺癌初级预防的长期图像派生人工智能风险模型
The research analyzed a two-site case-cohort of women aged 30-90 in a population-based screening study in Minnesota and the KARMA cohort from Sweden using an image-derived AI-risk model compared with the clinical Tyrer-Cuzick v8 model using clinical guidelines. Analyses were performed for risk of all breast cancer and restricted to invasive cancer alone. Using the National Institute for Health and Care Excellence (NICE) guidelines, considering women at 8% as high risk, 32% of breast cancers could be subject to preventive strategies in the 9.7% of women at high 10-year risk based on the AI risk model, the 10-year image-derived AI-risk model showed good discriminatory performance and calibration in the two case-cohorts and, showed a significantly higher discriminatory performance than the clinical Tyrer-Cuzick v8 risk model in KARMA. Demonstrating the image-derived AI-risk model has the potential for clinical use in primary prevention and targets up to one third of breast cancers.
该研究分析了明尼苏达州基于人群的筛查研究中30-90岁女性的两地病例队列,以及来自瑞典的KARMA队列,使用图像派生的人工智能风险模型与根据临床指南的Tyrer-Cuzick v8模型进行比较。风险分析包括所有乳腺癌,并限制为仅侵袭性癌症。根据国家健康与护理卓越研究所(NICE)指南,将8%的女性视为高风险,预计在基于人工智能风险模型的高10年风险女性中,有32%的乳腺癌可能适用预防策略,该10年图像派生的人工智能风险模型在两个病例队列中显示了良好的区分性能和校准,并且在KARMA中表现出的区分性能显著高于临床的Tyrer-Cuzick v8风险模型。表明图像派生的人工智能风险模型在初级预防中具有临床应用潜力,目标是乳腺癌的三分之一。
Join Us at SABCS 2024
加入我们参加SABCS 2024
Attendees are invited to view these posters during Poster Session 2 on December 11, 2024, from 5:30 to 7:00 p.m. CST. To learn more about iCAD's AI solutions, including the ProFound AI Breast Health Suite, visit iCAD's website or contact iCAD for an interview at SABCS.
与会者被邀请在2024年12月11日的海报会议2期间查看这些海报,时间为下午5:30至晚上7:00 CST。要了解更多关于iCAD的人工智能解决方案,包括ProFound AI乳腺健康套件,请访问iCAD的网站或联系iCAD进行SABCS的采访。
About iCAD, Inc.
iCAD, Inc. (NASDAQ: ICAD) is a global leader on a mission to create a world where cancer can't hide by providing clinically proven AI-powered solutions that enable medical providers to accurately and reliably detect cancer earlier and improve patient outcomes. Headquartered in Nashua, N.H., iCAD's industry-leading ProFound Breast Health Suite provides AI-powered mammography analysis for breast cancer detection, density assessment and risk evaluation. Used by thousands of providers serving millions of patients, ProFound is available in over 50 countries. In the last five years alone, iCAD estimates reading more than 40 million mammograms worldwide, with nearly 30% being tomosynthesis. For more information, including the latest in regulatory clearances, please visit .
关于iCAD公司
iCAD公司(纳斯达克:ICAD)是全球领先的企业,致力于创造一个癌症无法隐藏的世界,通过提供经过临床验证的人工智能解决方案,使医疗提供者能够更准确可靠地早期检测癌症,提高患者的治疗效果。iCAD总部位于新罕布什尔州纳舒厄,行业领先的ProFound乳腺健康套件提供乳腺癌检测、密度评估和风险评估的人工智能乳腺摄影分析。ProFound已被数千名医疗提供者在超过50个国家使用,服务数百万患者。在过去五年中,iCAD估计全球共读取了超过4000万份乳腺摄影,其中近30%为层析成像。有关更多信息,包括最新的监管批准,请访问。
ProFound Detection v4 is FDA Cleared. ProFound AI v3 is FDA Cleared. CE Marked. Health Canada Licensed. ProFound AI Risk is CE Marked and Health Canada Licensed. Solutions may not be available in all geographies.
ProFound Detection v4 已获得 FDA 清除。ProFound AI v3 已获得 FDA 清除。已获得 CE 认证。获得加拿大健康许可。ProFound AI 风险已获得 CE 认证并获得加拿大健康许可。解决方案可能并非在所有地区均可用。
Forward-Looking Statements
前瞻性声明
Certain statements contained in this News Release constitute "forward-looking statements" within the meaning of the Private Securities Litigation Reform Act of 1995, including statements about the expansion of access to the Company's products, improvement of performance, acceleration of adoption, expected benefits of ProFound AI, the benefits of the Company's products, and future prospects for the Company's technology platforms and products. Such forward-looking statements involve a number of known and unknown risks, uncertainties, and other factors that may cause the actual results, performance, or achievements of the Company to be materially different from any future results, performance, or achievements expressed or implied by such forward-looking statements. Such factors include, but are not limited, to the Company's ability to achieve business and strategic objectives, the willingness of patients to undergo mammography screening, whether mammography screening will be treated as an essential procedure, whether ProFound AI will improve reading efficiency, improve specificity and sensitivity, reduce false positives and otherwise prove to be more beneficial for patients and clinicians, the impact of supply and manufacturing constraints or difficulties on our ability to fulfill our orders, uncertainty of future sales levels, to defend itself in litigation matters, protection of patents and other proprietary rights, product market acceptance, possible technological obsolescence of products, increased competition, government regulation, changes in Medicare or other reimbursement policies, risks relating to our existing and future debt obligations, competitive factors, the effects of a decline in the economy or markets served by the Company; and other risks detailed in the Company's filings with the Securities and Exchange Commission. The words "believe," "demonstrate," "intend," "expect," "estimate," "will," "continue," "anticipate," "likely," "seek," and similar expressions identify forward-looking statements. Readers are cautioned not to place undue reliance on those forward-looking statements, which speak only as of the date the statement was made. The Company is under no obligation to provide any updates to any information contained in this release. For additional disclosure regarding these and other risks faced by iCAD, please see the disclosure contained in our public filings with the Securities and Exchange Commission, available on the Investors section of our website at and on the SEC's website at http://www.sec.gov.
本新闻稿中包含的某些声明构成《1995年私人证券诉讼改革法案》定义下的“前瞻性声明”,包括有关公司产品获取途径扩展、业绩改善、采纳加速、ProFound AI 预期收益、公司产品的好处以及公司技术平台和产品的未来前景的声明。这些前瞻性声明涉及多种已知和未知的风险、不确定性和其他因素,这些因素可能导致公司的实际结果、表现或成就与任何未来结果、表现或成就存在重大差异,这些差异由这些前瞻性声明所表达或暗示。这些因素包括但不限于公司的商业和战略目标达成能力、患者进行乳腺X线检查的意愿、乳腺X线检查是否将被视为必要程序、ProFound AI 是否能改善阅读效率、提高特异性和敏感性、减少假阳性并对患者和临床医生更具益处、供应和制造限制或困难对公司履行订单能力的影响、未来销售水平的不确定性、在诉讼事务中进行自我辩护、保护专利和其他专有权利、产品市场接受度、产品技术的可能过时、竞争加剧、政府监管、医疗保险或其他报销政策的变化、与现有和未来债务义务相关的风险、竞争因素、公司经济或市场的下滑影响,以及公司与美国证券交易委员会的文件中详细说明的其他风险。“相信”、“展示”、“打算”、“预计”、“估计”、“将”、“继续”、“预期”、“可能”、“寻求”及类似表达识别前瞻性声明。提醒读者不要对这些前瞻性声明过分依赖,这些声明仅在声明发布的日期生效。公司没有任何义务提供任何本声明中包含信息的更新。有关iCAD面临的这些和其他风险的进一步披露,请参阅我们在证券交易委员会的公开文件中包含的披露,这些文件可在我们网站的投资者部分以及美国证券交易委员会网站 http://www.sec.gov 上找到。
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